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The Society of Actuaries and Annuity Systems Inc. Present: Annual Equity-Based Insurance Guarantees Conference November 17-18, 2014 Chicago, USA Table of Contents Corporate Sponsors..........................................................................................…..….....3 Presenter Biographies .......................................................................................….…....5 Attendee List .…....................................................................................................…….11 Agenda / Handouts….................................................................................................…18 The VA and FIA Landscape: A Reinsurer’s View…………………………...………………..20 Darryl Stewart & Markus Jaeger, Munich Re The Last 10 Years of Retirement Products: A Rating Agency’s Viewpoint.........................34 Neil Strauss, Moody’s History of Fixed Indexed Annuity Products ......................................……………..…………45 Alan Grissom, S&P Dow Jones Indices Hedging Market Risks………………………………......................................……………………52 Matt McFarland, CBOE Annuity Hedging: Impact on the Equity Derivatives market...............................................57 Phillipe Combescot, BNP Paribas Variable Annuity (“VA”) Products Pricing Challenges and issues ……………………………68 Amit Ayer, Willis Re Pricing Considerations for VA, FIA and VUL Products………………………………...............86 Tim Hill, Milliman Risk Management Funds………….....................................................................................95 Marshall Greenbaum, AnchorPath Financial Volatility Control – Optimising the overall product framework?........................................108 Stephen Einchcomb, Royal Bank of Scotland Impact of Hedging on Capital and Reserves...................................................................121 Alex Marion, Numerix FAS157, AG36, and Aligning Accounting Methodology with Hedging Strategy...............131 Brian Boucher, Transamerica Influence of Computing and Models on Risk Management……………………………………142 Peter M. Phillips, AON Benfield State-of-the-art Hybrid Modeling for Fixed Indexed Annuities and Variable Annuities…..165 Russell Goyder, FINCAD Understanding and Managing Policyholder Behavioral Risks.........................................194 Ben Neff, GGY Axis; Tim Paris, Ruark Insurance Advisors Panel Discussion with Chief Risk Officers (CROs)………………......................................222 Steve Ginnan, Nationwide Financial; John Rhodes. Lincoln Financial Group; Stephen Murphy, Ohio National Financial Services US Rates Outlook………………………..............................................................................224 Anshul Pradhan, Barclays Changing Distribution Paradigm for Fixed Indexed Annuities and Variable Annuities.....241 Ramsey Smith, GoldmanSachs The Last 10 Years of Retirement Products - A Consultant's Viewpoint………………….....250 Ken Mungan, Milliman The Last 10 Years of Retirement Products – A Direct Writer/Hedger’s Viewpoint: VA Hedging Lessons Learned ….…………………………………………………………………278 Andy Rallis, Metlife Platinum Sponsors Silver Sponsors Presenter Biographies Conference Chairman Dr. K. (Ravi) Ravindran President Annuity Systems Inc. (ASI) Dr. K. (Ravi) Ravindran currently spends much of his time lecturing, selectively consulting on VArelated issues and running a private equity fund. In addition to this, he holds a visiting professor appointment in Haskolinn Reykjavik (Iceland) and is the author of the recently published book titled The Mathematics of Financial Models. As a pioneer to apply derivatives-based hedging techniques to manage market risks embedded in VAs, Ravindran’s experience includes: Developing equity-based guarantee products and managing in excess of USD 100 billion in account value for insurance companies selling these products; Running exotic derivatives desk globally at Toronto Dominion Bank; Manning the CEO position at RGA Financial Products (a subsidiary of Reinsurance Group of America); Holding past adjunct professorships at both the University of Waterloo and University of Calgary; Co-editing the well-received book titled VA: A Global Perspective; Authoring the well-received book titled Customized Derivatives: A Step-by-Step Guide to Using Exotic Options, Swaps and Other Customized Derivatives; Serving as an associate editor of the well-received book titled Handbook of Derivatives; and Editing/authoring papers of which some have formed, and continue to form, part of the professional exams in various societies. Co-Moderator Steve Fredlund FSA, MAAA, MBA Allianz Investment Management AIM Principal – Hedging Steve Fredlund is an actuary within the Allianz Investment Management group of AllianzLife, leading variable annuity hedge production for two European entities. He also volunteers as the Executive Director of Our Response, a non-profit he co-founded focused on community transformation work in Rwanda. Steve lives with his wife and three children in Minnesota. Presenters Amit Ayer, FSA, MAAA Vice President, Senior Actuary – Life Solutions Willis Re Amit Ayer is based in the New York City office of Willis Re, as a Vice President, Senior Actuary for the Life Solutions Group. He joined Willis Re in August 2014. Prior to joining Willis Re, Amit worked at Ernst & Young, where he was the co-lead for the firm’s insurance risk management practice. He led the firm’s variable annuity risk management group and was a key member of the firm’s Enterprise Risk Management group. Prior to Ernst & Young, Amit also worked at an elite management consulting firm, focusing on strategic implications around developing an insurer capital model for companies under the SIFI designation. Amit also has also led the variable annuity hedging function for a major multinational insurer, with responsibilities including trade execution, hedging strategy, liability and asset modeling, and performance attribution reporting. Amit is a frequent speaker at actuarial and risk management industry events. Amit is a Fellow of the Society of Actuaries (FSA) and a Member of the American Academy of Actuaries (MAAA). He holds a Masters in Biostatistics (Distinction) from Columbia University and a Bachelors in Human Biology (Honors) from Brown University. Russell Goyder, Ph.D. Director of Quantitative Research and Development FINCAD Before joining FINCAD in 2006, Dr. Russell Goyder worked as a consultant at The MathWorks, solving a wide range of problems in various industries, particularly in the financial industry. He now manages FINCAD’s quant team and oversees the delivery of analytics functionality in FINCAD’s products, from initial research to the deployment of production code. Dr. Goyder holds a Ph.D. in Physics from the University of Cambridge. Alan Grissom Vice President – Insurance Channel Management S&P Dow Jones Indices Alan works in the S&P Dow Jones Indices Channel Management business as the Global Head of Insurance. Alan strategically leads and directs the insurance lines of business for S&P Dow Jones Indices. He has been with S&P Dow Jones Indices since 2010. Prior to joining S&P Dow Jones Indices, Alan spent 12 years working in the insurance space with some of the largest insurance carriers in the world. A successful serial entrepreneur, he was a founding partner of a marketing consulting firm and the founder of a software development firm. He also established and led the highly acclaimed Independent Distribution Channel at AIG American General Life and Accident after guiding the annuity products division to record sales and profits. Alan has a master’s degree from Vanderbilt University’s Owen School of Management and a bachelor’s degree from The University of Alabama. Matt McFarland Director of Business Development Chicago Board Options Exchange (CBOE) Matt McFarland works with insurance companies to enhance hedging strategies associated with variable annuities and fixed indexed annuities. He also oversees CBOE’s FLEX options program, the Exchange’s answer to the OTC market where users can customize key contract terms like strike price, expiration date and exercise style. In addition, Matt manages CBOE’s Customized Options Pricing Service (COPS), an end-of-day valuation service for equity options. Matt chairs CBOE’s Retail Advisory Committee and is a member of the Security Traders Association’s Listed Options Committee. He has worked at CBOE since 2007. Prior to joining CBOE, Matt worked in equity derivative sales at JP Morgan for ten years. Matt graduated from Marquette University in 1992 and earned an MBA in Finance from DePaul University in 2001. Ken Mungan FSA, MAAA Financial Risk Management Practice Leader Milliman Ken is the leader of Milliman Financial Risk Management, LLC, which he founded in 1998. Milliman’s financial risk management business is the leading provider of hedging services to the retirement savings industry. Milliman’s work helps the clients of life insurance companies, banks, financial advisory platforms and mutual fund firms create strategies for success in retirement. In particular, the Milliman Managed Risk Strategy provides retail investors with institutional quality market risk management for $60 billion in variable annuity, 401(k) and retail mutual funds. In addition, Milliman Financial Risk Management, LLC, serves as an investment advisor to provide hedging services on $90 billion of assets on the balance sheets of financial institutions. Ken has pioneered hedging techniques that are standard practice in the industry today. He and his team have worked with most major life insurers to implement and operate hedging strategies to protect the solvency of these institutions and to stabilize earnings. His current focus is on expanding the availability of risk management techniques to give individuals simple, transparent and reliable tools to manage market risks in retirement. Ken is a frequent speaker at industry events and the author of many professional articles. Stephen R. Murphy, FSA, MAAA Senior Vice President, Capital Management Ohio National Financial Services Steve is Senior Vice President, Capital Management for Ohio National Financial Services. Steve is an FSA and MAAA. Steve joined Ohio National from GE Financial Assurance in Lynchburg, Virginia in 2002. Since then, Steve has held a number of positions at Ohio National including responsibility for annuity product development. Steve’s responsibilities span annuity reinsurance, enterprise capital including RBC, and thought leadership in the product area. Steve is also involved in various industry work groups on variable annuities. Steve is a graduate of the The Ohio State University. Ben Neff, FSA Vice President, US Business Development GGY AXIS Ben Neff joined GGY AXIS in 2009, and has been involved in a variety of marketing and support activities focusing on ALM, equity linked products, and hedging. Ben started his career in the Aerospace division of ITT Industries as a Simulation Engineer after obtaining Bachelor’s degrees in Math and Physics from Indiana University in 2001. In 2006, he obtained an MBA from Purdue University with a concentration in Finance and a fellowship in Marketing and Business Development. Prior to joining GGY, Ben worked for Conseco Services in an ALM role. Timothy Paris, FSA, MAAA Chief Executive Officer Ruark Insurance Advisors, Inc. Tim leads RIA in providing consultative reinsurance brokerage services that help insurance company clients better manage risks related to longevity, mortality, and guarantees to policyholders. These efforts are complemented by the company’s industry-leading experience studies of policyholder behavior. Prior to joining the company in 2009, Tim was an officer at several insurance companies, with responsibilities that included product management, pricing, valuation, expense management, financial reporting and asset-liability management. Throughout his career, Tim has enjoyed leadership roles in the development of innovative retirement savings and protection products. Tim is a frequent speaker at industry events on the topics of longevity and mortality risk management and policyholder behavior. His work and commentary have appeared in National Underwriter, Investment News, American Banker, Annuity News, Retirement Income Journal, Insurance Risk, The Actuary, Reinsurance News and Risk Management. Tim is a contributing editor for The Actuary magazine and through the Ruark Insurance Advisors blog he is a contributing member of the Society of Actuaries’ online outreach team for the SOA Riskpertise website. He is also a member of Insurance Ireland's Business Advisory Panel. Tim is a Fellow of the Society of Actuaries, a member of the American Academy of Actuaries and a graduate of the University of Connecticut, where he earned a degree in Mathematics with high honors. Peter M. Phillips Managing Director and Head of the Annuity Solutions Group Aon Benfield Peter since 1977 has developed an international track record of designing, implementing and managing effective variable annuity hedge programs. Peter has over 25 years of derivative trading, modeling and risk management experience in the banking and insurance industries. The Annuity Solutions Group at Aon Benfield, provides clients with investment advisory and consulting services, and PathWise software, an award winning integrated high performance computing business solution to model, price, value, report and manage complex financial guarantee risk embedded in Life Insurance products. It is offered to clients either as a Softwareas-a-Service solution in Amazon and/or a bare metal co-location solution , or as an on-premise software where the client is responsible for the installation and administration of PathWise. Peter obtained an honors MBA from the University of Chicago, and a Msc in Finance from the London School of Economics, and an honors Bachelor of Commerce and Economics from the University of Toronto. Peter holds Series 7, 24, 66, 79, 3 and 4 registrations with Aon Benfield Securities, Inc. Andrew D. Rallis, FSA, MAAA Senior Vice President & Global Chief Actuary MetLife, Inc. Andrew D. Rallis is Senior Vice President and Global Chief Actuary and is responsible for the practice of actuarial science across MetLife. Andrew also serves as Chairman of MetLife’s captive reinsurers and serves on the company’s employee benefits Investment Advisory Committee, as well as several internal asset/liability management and risk management committees. He is a frequent speaker at industry meetings on ALM and actuarial topics such as the risk management of variable annuities, the impact of low interest rates on insurers and the transformation of actuarial functions. Andrew joined the company in 1984 in MetLife's Actuarial Development Program. After attaining Fellowship in the Society of Actuaries in 1992, he was honored with MetLife’s Bailie Award in 1993, awarded periodically to non-officer actuaries in recognition of high standard of performance, sense of integrity and degree of dedication to the company's various businesses. He has advanced through roles of increasing responsibility in pricing, valuation and ALM departments and has extensive capital markets, US Generally Accepted Accounting Principles (GAAP), statutory financial reporting and product development experience. He has participated in the company's adoption of GAAP accounting, the demutualization and funding of the Closed Block, the development of MetLife's economic capital model, and in the actuarial due diligence of and purchase GAAP accounting for various acquisitions. Andrew graduated from the Massachusetts Institute of Technology (MIT) in 1982 with a BS in Physics and a BS in Mathematics. He is Fellow of the Society of Actuaries and a member of the American Academy of Actuaries. John M. Rhodes Chief Risk Officer Lincoln Financial Group John M. Rhodes leads the risk organization at Lincoln Financial Group, where his team develops methodologies and processes to measure, report and monitor risks throughout the organization. John also leads the Equity Risk Management function, which includes variable annuity hedging and guiding the corporation’s overall approach to managing equity product risk. John joined Lincoln Financial Group in February 2009 as the head of Equity Risk Management. Prior to joining Lincoln, he oversaw Hedging Operations and Performance Management for ING US Financial Services. John has also held risk roles with JPMorgan Chase and GE Capital. Prior to his corporate career, he served as an officer with the United States Navy, working as a specialist in nuclear propulsion. John holds a degree from the United States Naval Academy and an MBA from New York University. Neil Strauss, ASA, CERA Vice President – Senior Credit Officer Moody’s Investors Service Neil Strauss is Vice President – Senior Credit Officer of the Financial Institutions Group of Moody’s Investors Service. He is responsible for a portfolio of U.S. ratings within the Life Insurance Group. Prior to joining Moody’s in 2010, Neil worked for three decades in the insurance industry and as a senior credit rating agency insurance and reinsurance sector analyst. He has held actuarial, risk management and credit roles at New York Life, AXA-Equitable and AIG. A graduate of Johns Hopkins University, Neil holds two professional designations from the Society of Actuaries. Attendee List as of October 23, 2014 Sorted By Last Name Abiodun Afolabi Heroes Insurance Brookers Limited Ikeja, Nigeria Rich Ash Jackson National Life Insurance Co Lansing, MI Amit Ayer Willis Re Inc New York, NY Zafar Bhatti Manulife Financial Toronto, ON Steve Binioris Jackson National Life Insurance Co Lansing, MI Matt Blanchette Forethought Simsbury, CT Joshua Boehme Jackson National Life Insurance Co Lansing, MI Brian Boucher Transamerica Life & Protection St Petersburg, FL Joe Buffo X-Change Financial Access (XFA) CHICAGO, IL Renee Cassel Thrivent Financial Minneapolis, MN Simon Chan Toronto, ON Marie-Laure Chandumont Barclays Capital New York, NY Hsiaohsu Chang Cathay Life Taipei, Taiwan Yen Ming Chen Cathay Life Taipei, Taiwan Naveed Choudri Citigroup New York, NY Tom Christensen Nationwide Financial Columbus, OH Ryan Christianson S&P Dow Jones Indices New York, NY Philippe Combescot BNP Paribas New York, NY Erin Conrad Principal Financial Group Des Moines, IA Sufang Cui MetLife Morristown, NJ Jim Cypert Wells Fargo Reinsurance Charlotte, NC Tre DePietro BNP Paribas New York, NY Harold Dershowitz Data Life, Inc Verona, NJ Raynald Doyon Industrial Alliance Insurance & Financial Servic Quebec, QC Rajeev Dutt Milliman Inc Chicago, IL Donald Dye RBC Capital Markets New York, NY Jack Earl Sun Life Financial Waterloo, ON Stephen Einchcomb RBS London, United Kingdom Brandon Emerson Penn Mutual Life Insurance Co Horsham, PA Seong-Min Eom KPMG LLP New York, NY Kirk Evans Sammons Retirement Solutions West Des Moines, IA Mark Evans Applied Stochastic LLC Louisville, KY Peter Feng Athene USA West Des Moines, IA Ilya Finkler Global Atlantic Finanical Group New York, NY John Folkrod Pacific Life Insurance Co Newport Beach, CA Lindsay Foster Principal Financial Group Des Moines, IA Steve Fredlund Allianz Life Minneapolis, MN Craig Fyfe Sun Life Financial Waterloo, ON Rob Garfield FINCAD New York, NY Bill Gaumond Allianz Life Minneapolis, MN Steve Ginnan Nationwide Financial Columbus, OH Russell Goyder FINCAD Surrey, BC Marci Green Goldman Sachs New York, NY Marshall Greenbaum AnchorPath Financial Stamford, CT Alan Grissom S&P Dow Jones Indices New York, NY June Guan MetLife Jersey City, NJ Mark Hadley Goldman Sachs New York, NY Alex Haugh Barclays New York, NY Kelley Hebert RBS Securities Stamford, CT Eric Henderson Athene USA West Des Moines, IA Regynald Heurtelou Metlife Convent Station, NJ Daniel Heyer Nationwide Financial Columbus, OH Melissa Hidalgo Lincoln Financial Group Hartford, CT Timothy Hill Milliman Inc Bannockburn, IL Jason Hudes Goldman Sachs Asset Management New York, NY Stefan Jaschke Munich Re Munich, Germany Mike Kappos Wells Fargo Reinsurance Charlotte, NC Mark Kinzer Berkshire Hathaway Group Brookfield, WI Kathy Kohlstedt Securian Financial Group St Paul, MN Jim Kosinski The Hartford Simsbury, CT Ginny Kowalczyk CBOE Chicago, IL Trevor Kreel Manulife Financial Toronto, ON Sonin Kwon MassMutual Springfield, MA Marshall Lagani Denis Latulippe Laval University - School of Actuarial Science Quebec City, QC Christina Lee Berkshire Hathaway Group, Reinsurance Division Toronto, ON Crystal Li BMO Life Assurance Co Toronto, ON Xianhui Lin Prudential Financial Hartford, CT Shuo Liu AIG Life and Retirement Houston, TX Michael Loftus Ruark Insurance Advisors Inc Simsbury, CT Vivek Madlani Royal Bank of Scotland London, United Kingdom Alex Marion Numerix New York, NY Cedar Rapids, IA Arielle Marom Bnp Paribas Securities Corp. New York, NY Simon Martel Standard Life Assurance Co Montreal, QC Angie Matthews Jackson National Life Insurance Co Lansing, MI Wendy McCullough Thrivent Financial for Lutherans Minneapolis, MN Matthew McFarland Chicago Board Options Exchange Chicago, IL Zach Meier Great-West Financial Greenwood Village, CO Ryan Mellott Jackson National Life Insurance Co Lansing, MI Rachel Min Prudential Insurance Company Newark, NJ Dennis Montagna Richard Morris RBC Capital Markets New York, NY Abbas Mujtaba Lincoln Financial Group Philadelphia, PA Ken Mungan Milliman Inc Chicago, IL Stephen Murphy Ohio National Financial Services Cincinnati, OH Jordan Muse Ohio National Financial Services Cincinnati, OH Benjamin Neff GGY AXIS Indianapolis, IN William Ober AIG New York, NY Senol Ozturk Prudential Financial Newark, NJ Tim Paris Ruark Insurance Advisors Inc Simsbury, CT Patrick Persons Ameriprise Financial Minneapolis, MN Peter Phillips Aon Benfield Canada ULC Toronto, ON Jason Pilling Manulife Financial Toronto, ON Bryan Pinsky AIG Life and Retirement Woodland Hills, CA Tracey Polsgrove John Hancock USA Boston, MA Anshul Pradhan Barclays Capital New York, NY New York, NY Amna Qaiser Goldman Sachs Asset Management New York, NY Andrew Rallis Metropolitan Life Insurance Co Bridgewater, NJ Nikolaos Rapanos Goldman Sachs New York, NY Gustavo Rapaport FINCAD Vancouver, BC Marc Raphel FINCAD New York, NY Ravi Ravindran Annuity Systems Inc Toronto, ON Thomas Reedy John Hancock Financial Services Boston, MA John Rhodes Lincoln Financial Group Philadelphia, PA Alpesh Sanghani Ernst & Young LLP New York, NY Stacey Schabel Jackson National Life Insurance Co Lansing, MI Chad Schmitt Thrivent Financial For Lutherans Minneapolis, MN Brian Schroeder Jackson National Life Insurance Company Lansing, MI Denis Schwartz Lincoln National Life Insurance Co Fort Wayne, IN Michael Scriver Allianz Life Insurance Co of North America Minneapolis, MN Jee Shen Wells Fargo Life & Annuity Reinsurance Charlotte, NC James Simons Ameriprise Financial Minneapolis, MN Joel Smith Jackson National Life Insurance Company Lansing, MI Ramsey Smith Goldman Sachs & Co New York, NY Ray Song Song Protective Life Birmingham, AL Shirley Song Song Milliman Inc Chicago, IL Christian Stauder RBS Stamford, CT Darryl Stewart Munich Re Munchen, Germany Neil Strauss Moody's Investors Service New York, NY Peter Travnicek Numerix LLC Chicago, IL Jeff Walentowski Thrivent Financial for Lutherans Appleton, WI Brian Walta Jackson National Life Insurance Co Lansing, MI Michael Warsh Chicago Board Options Exchange Chicago, IL Joseph Weiss Voya Financial Windsor, CT Paul Weissman MetLife Bloomfield, CT Nathan Wilbanks Nationwide Financial Columbus, OH John Wong MetLife New York, NY Steve Wright Ruark Consulting LLC Simsbury, CT Justin Wyant Penn Mutual Life Insurance Co Horsham, PA Zhen Xiang Transamerica Capital Management Cedar Rapids, IA Yiping Yang Milliman Inc Chicago, IL Yi Yang Guardian Life Insurance Co New York, NY Sanyueh yao Metlife Basking Ridge, NJ Frankie Yung RGA Chesterfield, MO Trevor Zeimet Ameriprise Financial Inc Minneapolis, MN Frank Zhang Pacific Life Insurance Co Los Angeles, CA Jim Zhou Global Atlantic Financial Company New York, NY Weiqun Zhou Lincoln Financial Group Philadelphia, PA Vadim Zinkovsky MetLife New York, NY Monday, November 17, 2014 7:30 – 8:30 AM Registration and Breakfast 8:30 – 8:40 AM Opening Comments by Chairman 8:40 – 9:30 AM The VA and FIA Landscape Darryl Stewart, Munich Re 9:30 – 10:15 AM The Last 10 Years of Retirement Products – A Rating Agency’s Viewpoint Neil Strauss, Moody’s 10:15 – 10:45 AM Coffee Break 10:45 – 12:15 PM 1A – Risk Management Track: Hedging Market Risks Phillipe Combescot, BNP Paribas; Matt McFarland, CBOE; Alan Grissom, S&P Dow Jones Indices 1B - Pricing/Valuation Track: Pricing and Valuation Considerations for VA, FIA and VUL Products Amit Ayer, Willis Re; Tim Hill, Milliman 12:15 – 1:30 PM Lunch 1:30 – 3:00 PM 2A - Risk Management Track: Volatility Control Funds Stephen Einchcomb, Royal Bank of Scotland; Marshall Greenbaum, AnchorPath Financial 2B - Pricing/Valuation Track: Impact of Hedging on Capital and Reserves Brian Boucher, Transamerica; Alex Marion, Numerix 3:00 – 3:30 PM Coffee Break 3:30 – 5:00 PM 3A - Risk Management Track: Influence of Computing and Models on Risk Management Peter M. Phillips, AON Benfield; Russell Goyder, FINCAD 3B - Pricing/Valuation Track: Understanding and Managing Policyholder Behavioral Risks Ben Neff, GGY Axis; Tim Paris, Ruark Insurance Advisors 5:30 – 7:00 PM Reception and Networking Tuesday, November 18, 2014 7:30 – 8:30 AM Breakfast 8:30 – 10:00 AM Panel Discussion with Chief Risk Officers (CROs) Steve Ginnan, Nationwide Financial; John Rhodes. Lincoln Financial Group; Stephen Murphy, Ohio National Financial Services 10:00 – 10:30 AM Coffee Break 10:30 – 11:15 AM Rates Outlook Anshul Pradhan, Barclays 11:15 – Noon Changing Distribution Paradigm for Fixed Indexed Annuities and Variable Annuities Ramsey Smith, GoldmanSachs Noon – 1:30 PM Lunch 1:30 – 2:30 PM The Last 10 Years of Retirement Products - A Consultant's Viewpoint Ken Mungan, Milliman 2:30 – 3:30 PM The Last 10 Years of Retirement Products – A Direct Writer/Hedger’s Viewpoint Andy Rallis, Metlife 3:30 PM Closing Comments by Chairman K. Ravindran, Annuity Systems Inc. 12/8/2014 The VA & FIA Landscape: A Reinsurer’s View 10th Annual Equity Based Insurance Guarantees Conference (Chicago) 17 November 2014 (0840 – 0930 hours) Darryl Stewart & Markus Jaeger Disclaimer This material is for distribution only under such circumstances as may be permitted by applicable law. It has no regard to the specific investment objectives, financial situation or particular needs of any recipient. It is published solely for informational purposes. No representation or warranty, either express or implied, is provided in relation to the accuracy, completeness or reliability of the information contained herein, nor is it intended to be a complete statement or summary of the products, markets or developments referred to in the materials. It should not be regarded by recipients as a substitute for the exercise of their own judgement. Any opinions expressed in this material are subject to change without notice and may differ or be contrary to opinions expressed by other business areas or groups of Munich Re as a result of using different assumptions and criteria. Munich Re is under no obligation to update or keep current the information contained herein. Neither Munich Re nor any of its affiliates, nor any of Munich Re‘ or any of its affiliates, directors, employees or agents accepts any liability for any loss or damage arising out of the use of all or any part of this material. Prior to entering into a transaction you should consult with your own legal, regulatory, tax, financial and accounting advisers to the extent you deem necessary to make your own decisions. Distribution of this document does not oblige us to enter into any transaction. Any offer would be made at a later date and subject to contract, satisfactory documentation and market conditions. 1 12/8/2014 Introduction to Munich Re ■ Who are we (in the context of equity based insurance guarantees)? ■ What have we been doing (recently)? ■ What would we like to share? Feedback on Market Views and Trends Economic Observations Reporting Solutions The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 3 Feedback on Market Views & Trends 2 12/8/2014 Messages from the Market 1. End of the Arms Race 2. Volatility Control & De-Risking 3. Volume Management 4. Hedging Adequacy 5. Balance Sheet Proliferation The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 5 17/11/2014 6 1. End of the Arms Race ■ Unsupportable enhancement of product terms has slowed ■ Frequency of update of terms has reduced significantly ■ Product terms designed within risk management constraints ■ But…still enough legacy missile stockpiles to destroy the world? The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 3 12/8/2014 2. Volatility Control & De-Risking ■ Explict: “Vol-Control” funds ■ Implicit: Limits on fund allocations ■ Reflects heightened post-crisis appreciation of where Vol can go ■ Vol-Control funds creates some challenges for conventional hedging thinking (the hedge is in the fund!?!) ■ Also creates challenges with respect to reserve and capital modeling The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 7 17/11/2014 8 3. Volume Management ■ Many players actually seeking to limit business volumes to strategic targets ■ Message 3 is arguably driver of messages 1 and 2 ■ Could discipline change if one or two players (perhaps new players) started to chase volume? ■ Accepted disconnect between industry perception of volumes and external perception of volumes The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 4 12/8/2014 4. Hedging Adequacy ■ Consistently heard that people are “satisfied” with their hedging programs ■ Many different approaches (close matching of Greeks, macro hedging of tails) ■ Naturally, there is self-selection ■ No complacency, but palpable confidence ■ However… The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 9 17/11/2014 10 5. Balance Sheet Proliferation ■ Too many balance sheets! ■ Challenge of instability across different measures ■ Limitations to reflecting actual hedging strategies in reporting The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 5 12/8/2014 Messages from the Beyond the Market (FIA) 1. Barbarians at the Gate ■ Financial Sponsors / “Hedge Fundy” acquirors have leading bid for fixed annuity business (whether indexed or not) ■ Insurance liabilities perceived by many non-insurance players as retail term funding with a risk overlay ■ Pricing reflects view of investment returns available in excess of discount rate (i.e. borrowing cost) ■ Interesting for Europeans – having spent the last 10 years trying to obliterate spreads in excess of swaps as a component of Solvency 2 The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 11 Economic Observations 6 12/8/2014 Operations / Hedging Platform Hedging Platform – Main Components Calypso Data Warehouse ■ Front office system ■ Store and transform policy data ■ Store market data ■ Quality assurance of policy data ■ Pricing and Valuations ■ Biometric studies ■ Compute hedge sensitivities ■ Maintain IT-interfaces with clients ■ Perform daily hedging ■ Generate reports, e.g. limit system, risk reports etc. Java Library ■ Business and cash flow logic ■ Financial Models and their calibrations ■ Biometric models The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 13 Economic Risk Management Challenges for hedging ■ Complexity of various balance sheets and requirements Hedging Reporting Product Design ■ Difficulties in getting sufficient credit for hedging. Requires to implement and follow a Clearly Defined Hedging Strategy (CDHS) ■ In recent market environments hedging tends to increase statutory reserves but decrease Total Asset Requirement (TAR) ■ Complexity of implementation of the CDHS in corresponding cash flow models (nested simulation) The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 14 7 12/8/2014 Statutory Reserve vs. Market Consistent Price Case Study for a pure GMAB: CTE levels (based on the standard AAA scenario generator) vs. Put Option Price GMAB vs. Put Option (ATM) GMAB vs. Put Option (80% ITM) 40 40 MC-Price 35 CTE 70 30 CTE 90 25 CTE 70 30 CTE 90 25 20 20 15 15 10 10 5 MC-Price 35 5 0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Maturity (in years) ■ Statutory reserve and TAR favorable for longer maturities due to high risk premium 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Maturity (in years) ■ Market consistent price more favorable for deeper in-the-moneyness ■ Market consistent price competitive for short maturities only The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 15 Statutory Reserve vs. Market Consistent Price Case Study for a pure GMAB : Sensitivities of CTE 70 and Put Option Delta (ATM) Gamma (ATM) 0 -0.1 0.07 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 -0.2 CTE 70 - Gamma 0.05 -0.3 0.04 -0.4 -0.5 0.03 -0.6 0.02 -0.7 MC-Delta -0.8 -0.9 -1 MC-Gamma 0.06 CTE 70 - Delta 0.01 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Maturity (in years) Maturity (in years) ■ Low sensitivity of statutory reserve for longer maturities due to high risk premium ■ Overall high Gamma profile for statutory reserve ■ Comparably high Delta for short maturities because of characteristics of the CTE The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 16 8 12/8/2014 Statutory Reserve vs. Market Consistent Price Case Study for a pure GMIB: CTE levels and Sensitivities (65 year old male at maturity) GMIB Option 45 40 35 30 25 20 15 10 5 - CTE 70 - Rho (100bps shift) 12 CTE 98 10 CTE 70 8 6 4 2 - 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Maturity (in years) ■ Higher steepness of CTE 70 compared to GMAB option because of additional embedded interest rate guarantee and mean reversion of interest rates in the AAA Economic Scenario Generator 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Maturity (in years) ■ Low Rho for long maturities due to high mean reversion of interest rates ■ Significant Rho for short maturities since AAA ESG is calibrated to current treasury yields The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 17 Statutory Reserve vs. Market Consistent Price Conclusion for these simple Examples ■ High costs for hedges especially for longer term guarantees compared to statutory reserve or total asset requirement. ■ High market sensitivities of statutory reserve for shorter maturities ■ Hedge guided by market consistent valuation does not allow to pick up risk premium or mean reversion of interest rates ■ Tail hedging might look more effective in certain reporting regimes or for additional needs, such as rating capital requirements The economics of a real product might look very different because of large number of cash flows to be modeled, e.g. M&E fee, surrender charges, reinsurance cash flows etc. assumptions on policyholder behavior and utilization of their options … 17/11/2014 9 12/8/2014 Reporting Solutions Gaggle of Balance Sheets? ■ Gaggle ■ Herons ■ Siege ■ Swans ■ Murder ■ Ravens ■ Cackle ■ Parrots ■ Lamentation ■ Hyenas ■ Pandemonium ■ Geese ■ Unkindness ■ Crows The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 20 10 12/8/2014 If Portfolio is Hedged, Why is There a Problem? ■ Distinguish between truly hedged positions and emergence of basis risk ■ If perfectly covered with a static hedge – then there is no problem ■ If dynamically covered with a CDHS, then impact is reduced by hedge effectiveness coefficients □ Philosophical discussion around reason ■ If dynamically covered without CDHS, then uncovered from a reporting perspective (relying on delta consistency through time) The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 21 Representation of Balance Sheets Balance Sheet (AG43) Balance Sheet (C3P2) Segregated Fund Assets Policyholder Account Value Segregated Fund Assets General Account Assets Cost of Guarantees (CTE70) General Account Assets Policyholder Account Value Cost of Guarantees (CTE90) Balance Sheet (Rating Agency) Segregated Fund Assets General Account Assets The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger Policyholder Account Value Cost of Guarantees (CTE98) 17/11/2014 22 11 12/8/2014 Can We Be of Assistance? ■ Can we codify the hedging program so we know in all states of the world what hedges the insurer is going to buy? ■ Can we price what the insurer is going to buy within the existing reserving calculations (considering the market parameters projected within an ESG) ■ Can the reinsurer offer fixed pricing for parameters not projected by ESG ■ Can we incorporate delivery of such a package in a reinsurance contract The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 23 Impact on Balance Sheet Opening Balance Sheet Segregated Fund Assets Policyholder Account Value General Account Assets Cost of Guarantees Effect of Reinsurance Closing Balance Sheet Segregated Fund Assets Policyholder Account Value Segregated Fund Assets Policyholder Account Value Paid out as Reinsurance Premium General Account Assets Cost of Guarantees Reinsurer Share of Guarantee Cost of Guarantees Obligation from Reinsurer Reinsurer Share of Guarantee The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 24 12 12/8/2014 Representation of Balance Sheets (post Reinsurance) Balance Sheet (AG43) Segregated Fund Assets Policyholder Account Value Reinsurer Share of Guarantee Cost of Guarantees (CTE70) Balance Sheet (C3P2) Segregated Fund Assets Policyholder Account Value Reinsurer Share of Guarantee Cost of Guarantees (CTE90) Balance Sheet (Rating Agency) Segregated Fund Assets Policyholder Account Value Reinsurer Share of Guarantee Cost of Guarantees (CTE98) The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 25 What Have We Seen & What Do We Think? Market Feedback Economic Observations 1. End of the Arms Race ■ Challenges of CTE liability valuation, versus market valuation of hedging instruments 2. Volatility Control & De-Risking 3. Volume Management 4. Hedging Adequacy 5. Balance Sheet Proliferation 6. Fixed Annuities as Alternative Funding for Credit Focused Financial Institutions ■ Challenges of hedging in the face of AAA ESG drift and mean reversion Reporting Solutions ■ Reinsurance as reporting stabilization tool The VA & FIA Landscape: A Reinsurer’s View – Darryl Stewart & Markus Jaeger 17/11/2014 26 13 12/8/2014 Thank you for your attention! 14 Equity Based Insurance Guarantees: A Rating Agency View 10th Annual Equity Based Insurance Guarantee Conference (Chicago) 0930 – 1015 Hours NEIL STRAUSS, Vice President – Senior Credit Officer 17 November 2014 Agenda 1. Win-Win? 2. Post-Financial Crisis 3. De-risked Product Offerings 4. Legacy Block 5. Captives 6. Policyholder Behavior 7. What’s Changed? Stayed the Same? Equity Based Insurance Guarantees: A Rating Agency View, November 2014 2 1 1 Win-Win? Equity Based Insurance Guarantees: A Rating Agency View, November 2014 3 Ten years ago, selling a lot of retirement annuities to baby boomers seemed to be a ‘win-win’ strategy for all. However, the financial crisis and subsequent period of very low interest rates have necessitated a modified view. The session will discuss the developments related to variable annuities including such key topics as de-risked product offerings, legacy block performance, captives and policyholder behaviour. What has changed over the past 10 years and what has stayed the same and how have the rating agency’s view of such businesses evolved? Equity Based Insurance Guarantees: A Rating Agency View, November 2014 4 2 Selling a lot of retirement annuities to baby boomers seemed to be a ‘win-win’ strategy for all - that is until… Interest Rates in the US Since 1960 Recent Equity Market Movements Dow Jones Industrial Average 10 Year US Treasury 16 18,000 14 16,000 14,000 12 12,000 (%) 10 10,000 8 8,000 6 6,000 4 4,000 2 2,000 0 0 Source: Moody's Analytics Source: Moody's Analytics The financial crisis and subsequent period of very low interest rates necessitated a modified view Equity Based Insurance Guarantees: A Rating Agency View, November 2014 5 Selling a lot of retirement annuities to baby boomers seemed to be a ‘win-win’ strategy for all » Why a growth market for insurers? – Positive demographic trends related to baby boomers’ retirement needs – Social Security provides a safety net but more is needed – Private pension plans less generous than in past » shift from “rich” defined benefit plans » Insurers happy to fill the gap » In reality, VA with living benefit guarantees – triple play – For consumers: mutual fund + tax benefit + guarantee – For insurers: » A. + Ice cream + sprinkles + toppings » B. - TARP entry ticket » C. - hole that can be filled by ‘wealthy Euro relatives‘ – For life actuaries: » Finally, a chance to show that P&C actuaries aren’t the only ones to experience ‘tail’ risks/’cat’ events Equity Based Insurance Guarantees: A Rating Agency View, November 2014 6 3 2 Post-Financial Crisis Equity Based Insurance Guarantees: A Rating Agency View, November 2014 7 Reassessments post-financial crisis » Some pulled out totally » Some pulled back » Many de-risked new products » Some offered non-guarantee sleeves » More hedging » Higher prices » Products with internal balancing » Less non proprietary sales » Few new entrants Equity Based Insurance Guarantees: A Rating Agency View, November 2014 8 4 VA Blocks in Much Better Shape; Market Correction Risk S&P 500 Index VA GLB Net Amount at Risk (in $ bn) S&P 500 MetLife 2500 Prudential Jackson Lincoln $8.0 $7.0 2000 $6.0 $5.0 1500 $4.0 1000 $3.0 $2.0 500 $1.0 0 $0.0 2009 Source: Moody's Analytics 2010 2011 2012 2013 Source: Company 10Ks » Rising equity markets have lifted fees and reduced Net Amount at Risk (NAR) exposures – ROEs on VA blocks exceed expectations as long as market growth > reserve assumption – But next market correction would restore NAR exposures and potential for losses Equity Based Insurance Guarantees: A Rating Agency View, November 2014 9 VA Blocks in Much Better Shape; Market Correction Risk (cont’d) S&P 500 Volatility Index S&P 500 VIX Jun-14 Sep-14 Mar-14 Dec-13 Jun-13 Sep-13 Mar-13 Dec-12 Jun-12 Sep-12 Mar-12 Dec-11 Jun-11 Sep-11 Mar-11 Dec-10 Jun-10 Sep-10 Mar-10 Dec-09 Jun-09 Sep-09 Mar-09 Dec-08 Jun-08 Sep-08 Mar-08 Dec-07 Jun-07 Sep-07 Mar-07 Dec-06 Jun-06 Sep-06 Mar-06 Dec-05 90% 80% 70% 60% 50% 40% 30% 20% 10% 0% Source: Moody's Analytics » Low market volatility reduces cost of hedging, supports earnings » Hedging continues to advance – Still under-hedging interest rate risk (rho); “Low for long” problematic – Divergent approaches to hedge objective » De-risking discipline through product design and re-pricing continues to improve risk profile of overall VA block as lower risk products become a bigger portion of the overall block Equity Based Insurance Guarantees: A Rating Agency View, November 2014 10 5 3 De-Risked Product Offerings Equity Based Insurance Guarantees: A Rating Agency View, November 2014 11 De-risked Product Offerings » Throughout the middle of the last decade, VA products’ guarantees became ‘richer’ – Higher interest rate guarantees » Financial crisis showed these benefits were underpriced – History repeats itself – parallel with 2002 / 2003 » Post financial crises prices rose, interest rate guarantees were brought down and asset allocation options limited Equity Based Insurance Guarantees: A Rating Agency View, November 2014 12 6 4 Legacy Blocks Equity Based Insurance Guarantees: A Rating Agency View, November 2014 13 Top 10 2013 US Variable Annuity Assets* by Issuer, $ billions Rank Issuer Insurance Financial Strength Rating ** Assets Market Share 1 TIAA-CREF Aa1 stable $436 23% 2 MetLife Aa3 stable $180 10% 3 Prudential A1 stable $150 8% 4 Jackson National A1 stable $115 6% 5 Lincoln National A1 stable $112 6% 6 AXA Equitable Aa3 stable $105 6% 7 SunAmerica/VALIC A2 stable $94 5% 8 Ameriprise Financial Aa3 stable $74 4% 9 Voya A3 positive $71 4% 10 Hartford A3 stable*** $62 3% Top 10 $1,399 Total Industry $1,868 Source: Morningstar. Data representative of Morningstar VA universe. New contracts may not be included in totals. * VA assets shown includes assets with and without guaranteed living benefits, e.g. TIAA ** Insurance financial strength rating, outlook for lead life insurance co. as of October 21, 2014 ***Rating on Hartford's VA subsidiary Hartford Life and Annuity Insurance Co, is Baa2 stable Performance Issues? Equity Based Insurance Guarantees: A Rating Agency View, November 2014 14 7 5 Captives Equity Based Insurance Guarantees: A Rating Agency View, November 2014 15 VA Recent Research on Onshore Captives » Captive reinsurers have been criticized for regulations and accounting regimes by incorporating in more loosely regulated domiciles, particularly offshore » With mounting regulatory pressure, companies are proactively “re-domesticating” their captives to onshore » We believe that with relatively accommodative regulation in certain US states popular as captive domiciles, on-shoring will not address the main credit risks of captives » There is heavy industry reliance on onshore captives » Only recapture to a traditionally regulated life insurer or voluntary strengthening of reserves, capital, and investments will remedy shortcomings » Regulators disagree about how to reduce reliance on captives – both the proposed approaches will likely address new business, not the in-force business reliant on captives Equity Based Insurance Guarantees: A Rating Agency View, November 2014 16 8 6 Policyholder Behavior Equity Based Insurance Guarantees: A Rating Agency View, November 2014 17 Policyholder Behavior Remains a Wildcard Group Insurance Financial Strength Rating Recent Charge Comment AXA Financial Aa3 Stable > $1 bil in 2011 Reserve charge due to lower than expected lapse rates & partial withdrawals VOYA A3 Positive > $1 bil in 2011 Reserve charge due to lower lapse rates MetLife Inc. Aa3 Stable 4Q12: $752 mil Lower than expected realized returns over the life of guaranteed VA policies Prudential Financial Inc. A1 Stable 3Q13: $1.7 bil Largely driven by updated lapse assumptions based on actuarial review » Policyholder behavior is unhedgeable » Actual behavior experience: limited data thus far – time will tell » Accounting charges for policyholder behavior assumption changes are very subjective » Policyholders & distributors likely to become increasingly more efficient Equity Based Insurance Guarantees: A Rating Agency View, November 2014 18 9 What’s changed? Stayed the same? » Top Players musical chairs over time » Less European interest » Prices up » Annuity business model success not guaranteed notwithstanding demographics » State profitability of legacy block? » M&A options limited » More hedging but … » Lesson - You can hedge some of the risk some of the time but not all of the risk all of the time - Stat / GAAP / IFRS » New products on the horizon? » Actuaries and investment folks on same page now? Equity Based Insurance Guarantees: A Rating Agency View, November 2014 19 Equity Based Insurance Guarantees: A Rating Agency View, November 2014 20 Neil Strauss VP-Sr. Credit Officer 7 WTC @ 250 Greenwich Street New York, NY 10007 10 © 2014 Moody’s Corporation, Moody’s Investors Service, Inc., Moody’s Analytics, Inc. and/or their licensors and affiliates (collectively, “MOODY’S”). All rights reserved. CREDIT RATINGS ISSUED BY MOODY'S INVESTORS SERVICE, INC. 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By continuing to access this document from within Australia, you represent to MOODY’S that you are, or are accessing the document as a representative of, a “wholesale client” and that neither you nor the entity you represent will directly or indirectly disseminate this document or its contents to “retail clients” within the meaning of section 761G of the Corporations Act 2001. MOODY’S credit rating is an opinion as to the creditworthiness of a debt obligation of the issuer, not on the equity securities of the issuer or any form of security that is available to retail clients. It would be dangerous for “retail clients” to make any investment decision based on MOODY’S credit rating. If in doubt you should contact your financial or other professional adviser. Equity Based Insurance Guarantees: A Rating Agency View, November 2014 21 11 11/28/2014 History of Fixed Indexed Annuity Products A PRESENTATION FOR SOCIETY OF ACTUARIES EQUITY BASED INSURANCE GUARANTEES CONFERENCE 2014 J. Alan Grissom 10th Annual Equity Based Insurance Guarantee Conference (Chicago) Session 1A 17 November, 2014 (1045 – 1215 hours) For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. U.S. FIXED INDEXED ANNUITY PRODUCT SALES $50 $45 $40 $35 $30 $25 $20 $15 $10 $5 $0 38.6 32.1 27.3 23.4 11.7 5.2 5.4 32.4 34.0 29.5 25.3 25.0 26.7 23.4 14.0 6.5 FIA Sales Source: Wink’s Sales and Market Report, Q2 2014 For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 2 1 11/28/2014 10 YEAR TREASURY 10 Year Treasury Yield 18 16 14 12 10 8 6 4 2 9/16/14 9/16/13 9/16/12 9/16/11 9/16/10 9/16/09 9/16/08 9/16/07 9/16/06 9/16/05 9/16/04 9/16/03 9/16/02 9/16/01 9/16/00 9/16/99 9/16/98 9/16/97 9/16/96 9/16/95 9/16/94 9/16/93 9/16/92 9/16/91 9/16/90 9/16/89 9/16/88 9/16/87 9/16/86 9/16/85 9/16/84 9/16/83 9/16/82 9/16/81 9/16/80 0 Source: Bloomberg, October 14, 2014 3 For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. EQUITY MARKETS 90 2500 80 2000 70 60 1500 50 40 1000 30 20 500 10 0 0 10 Year Treasury Yield VIX S&P 500 Source: Bloomberg, October 14, 2014. Past performance is not a guarantee of future results. For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 4 2 11/28/2014 U.S. FIXED INDEXED ANNUITY PRODUCT SALES $50 $45 $40 $35 $30 $25 $20 $15 $10 $5 $0 FIA Issued Premium Buyer Statistics 38.6 27.3 23.4 11.7 2.8 25.3 25.0 26.7 32.1 29.5 32.4 • 63 Year Old Male 34.0 23.4 • $250k of Investable Assets • $82,114 Average Fixed Indexed Annuity Premium 14.0 6.5 4.3 5.1 5.4 • Safety Is Key Factor Sales By Distribution 100.00% 80.00% Sales By Surrender Charge Schedule 87.30% 80.40% 60.00% 40.00% 20.00% 11.10% 7.80% 0.00% Agency Bank 2Q13 1.60%4.60% 3.30%3.90% Broker Dealer 70.00% 60.00% 50.00% 40.00% 30.00% 20.00% 10.00% 0.00% Career 2Q14 < 6 Yr 7 Yr 8-9 Yr 10 Yr 11 - 13 14 Yr 15- 16 Two Yr Yr Tier 2Q13 2Q14 Source: Wink’s Sales and Market Report, Q2 2014 For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 5 AVERAGE FIA COMMISSIONS – AGENT LEVEL 10.00% 9.00% 8.00% 7.00% 6.00% 5.00% 2Q04 3Q04 4Q04 1Q05 2Q05 3Q05 4Q05 1Q06 2Q06 3Q06 4Q06 1Q07 2Q07 3Q07 4Q07 1Q08 2Q08 3Q08 4Q08 1Q09 2Q09 3Q09 4Q09 1Q10 2Q10 3Q10 4Q10 1Q11 2Q11 3Q11 4Q11 1Q12 2Q12 3Q12 4Q12 1Q13 2Q13 3Q13 4Q13 1Q14 2Q14 4.00% Source: Wink’s Sales and Market Report, Q2 2014 For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 6 3 11/28/2014 TRADITIONAL FIXED DEFERRED ANNUITY Bonus Rate + Declared Rate = Total Rate of Return For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 7 TRADITIONAL FIXED DEFERRED ANNUITY Bonus Rate + = Declared Rate And/Or Indexed Rated Total Rate of Return For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 8 4 11/28/2014 PRODUCT EVOLUTION 38.6 • • • 29.5 27.3 11.7 • More Carriers 5.4 • • • • • 23.4 GLWBs Introduced Shorter Surrender Charges Lower Bonus Rates More Uniform Crediting Methods More Indices 1998 5.1 • More Products 25.0 32.4 • More Complex Indices • Risk Control • Smart Beta 2008 4.3 2.8 6.5 25.3 32.1 26.7 2014 Few Products Available1 Long Surrender Charges – Up to 17 Years2 High Bonus Rates – Up to 12.5%1 High Commissions – 36% were greater than 23.4 11% in 20011 Tiered Structures1 Few Indices1 Proprietary Crediting Methods1 14.0 • • • • 34.0 Source: 1Index Compendium 2001Q2 2Index Compendium October 2014 For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 9 TRADITIONAL FIXED INDEXED ANNUITY Bonus Rate + = Declared Rate And/Or Indexed Rate Total Rate of Return S&P 500 S&P Midcap 400 DJIA Russell 2000 Risk Control Smart Beta For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 10 5 11/28/2014 INDEXED RATE CREDITING Crediting Methods Participation Rates • Point To Point Monthly Quarterly Annual > Annual (Biannual, 5 Year, etc.) • - Averaging Daily Monthly • • • • Hedging Methods Dynamically - Statically Vanilla Cliquets Asians Performance Trigger For Financial Professionals. Not for Public Distribution. PROPRIETARY. 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Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 12 6 11/28/2014 THANK YOU Contact Us Alan Grissom [email protected] For Financial Professionals. Not for Public Distribution. PROPRIETARY. Permission to reprint or distribute any content from this presentation requires the written approval of S&P Dow Jones Indices. 13 7 11/28/2014 Hedging Market Risks 10th Annual Equity Based Insurance Guarantee Conference (Chicago) Session 1A November 17, 2014 (1045 – 1215 hours) Copyright © 2014 CBOE Forward Looking Statements Options involve risk and are not suitable for all investors. Prior to buying or selling an option, a person must receive a copy of Characteristics and Risks of Standardized Options. Copies are available from your broker, by calling 1-888-OPTIONS, or from The Options Clearing Corporation at www.theocc.com. Futures trading is not suitable for all investors, and involves risk of loss. 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Copyright © 2014 CBOE. All rights reserved. CBOE HOLDINGS 2 1 11/28/2014 Agenda Evolution of annuity hedging over the past 10 years from an exchange perspective What to expect going forward 3 CBOE HOLDINGS Hedging Market Risks History Annuity hedging before the 2008 financial crisis Limited hedging alternatives for insurers, especially for static hedging Post 2008 Heightened counterparty concerns Regulators push for increased transparency and centralized clearing Insurance industry seeks hedging solutions from exchanges CBOE HOLDINGS 4 2 11/28/2014 Hedging Market Risks History (continued) Exchanges not fully equipped to solve insurer hedging needs Limited expiration dates FLEX® option restrictions: – – – – “Blackout dates” Minimum size requirements Maximum expiration dates Strike precision 5 CBOE HOLDINGS Hedging Market Risks History (continued) CBOE & insurance industry successfully amend FLEX option trading rules Results Changes implemented in 2010 Results obtained from CBOE White Paper: “Hedge Execution Comparison Test” CBOE HOLDINGS 6 3 11/28/2014 Hedging Market Risks VA Hedging Variance Swaps Variance Futures (old) Quoted in volatility points Size expressed in vega notional Quoted in variance units Size expressed in contract amounts Margin requirements uncompetitive Variance Futures (new) Quoted in volatility points Size expressed in vega notional Margin requirements competitive Expiries match SPX listing cycle Source: JP Morgan paper: Just what you need to know about Variance Swaps”, 2005, Exhibit 1.1.2 7 CBOE HOLDINGS Hedging Market Risks Limitations of exchange-traded hedging solutions Plain vanilla options only Liquidity challenges on longdated options Higher capital requirements Symbol P/C Month Day Year 2SPX 2SPX 2SPX 2SPX 2SPX 2SPX 4SPX 4SPX 4SPX 4SPX 2SPX 2SPX 2SPX 4SPX 4SPX 2SPX 2SPX 2SPX 2SPX 4SPX 2SPX 2SPX P P P P P P P C P P P P P P C P P P P P P P 6 12 12 12 12 12 7 7 7 11 6 12 12 8 8 12 12 12 12 10 12 12 19 18 18 18 18 19 9 21 21 4 18 17 18 19 19 16 16 16 16 7 15 15 2020 2020 2020 2020 2020 2020 2020 2020 2020 2020 2021 2021 2021 2021 2021 2022 2022 2022 2022 2022 2023 2023 Strike Price 1665.00 1000.00 1760.00 2480.00 2580.00 1000.00 1072.00 1073.60 1073.60 1215.96 1665.00 1740.00 1281.00 674.64 1911.48 1770.00 1860.00 1960.00 2580.00 1757.07 1980.00 2580.00 Mark Open Price Interest 248.1266 351 79.4453 2,600 296.8604 45 668.6875 9 734.1469 68 79.4813 2,600 86.4839 233 848.8419 140 87.3183 140 123.1096 206 272.2795 179 311.6737 77 160.2306 800 33.0096 444 399.8329 444 345.1371 2,600 381.9926 43 425.2574 3 748.4911 12 335.9647 154 453.2743 3 756.1642 11 Source: Options Clearing Corp. CBOE HOLDINGS 8 4 11/28/2014 Hedging Market Risks Next phase of exchange-traded hedging solutions Asian & Cliquet Index FLEX Options Source: CBOE 9 CBOE HOLDINGS Matt McFarland [email protected] 5 28/11/2014 Annuity Hedging Impact on the Equity Derivatives market Philippe COMBESCOT, Managing Director Global Equity & Commodity Derivatives th 10 Annual Equity Based Insurance Guarantee Conference (Chicago) Session 1A: 17 November 2014 (1045 – 1215 hours) FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Annuity Sales over time FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Over the last 10 years annuity sales and the split between fixed and variable have been roughly stable. But significant change within each category : VA separate account went from 55% to 81% of Variable Annuities sales Indexed Annuities went from 16% to 60% of total Fixed Annuity sales Annuity Sales per quarter over the last 10 years 80 70 60 $ Billions 50 40 Variable Fixed 30 20 10 0 2003 1Q 2004 1Q 2005 1Q 2006 1Q 2007 1Q 2008 1Q 2009 1Q 2010 1Q 2011 1Q 2012 1Q 2013 1Q 2014 1Q Source: LIMRA. 2 1 28/11/2014 Insurance companies use of derivatives FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Derivative hedging per risk type Insurance companies use derivatives to hedge : Interest rate risk : 56% of the total derivatives notional. 75% is FX 18% through swaps, the rest through Caps and Floors Equity risk : 22% of derivatives notional. 80% of equity risk hedging is done through options. The rest through futures and Total Return Swaps. Rates 56% Equity 22% Foreign Exchange risk : 18% of derivatives notional Source: Schedule DB, NAIC Equity option type Equity option position : 400 billion notional Calls : 31% of total notional. Average maturity is 1.5 years. Mainly 16% Call 31% 18% used to hedge Fixed Indexed Annuity crediting. Put Puts : 35% of total notional. Average maturity is 5 years. Underlying Collar is mainly S&P 500. Used to hedge Variable Annuities GLBs Other 35% Source: Schedule DB 3 Variable Annuity guaranteed living benefits FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Q2 2014 GLB election rate Guaranteed living benefits still popular. Out of $27 billions variable annuity sales over GLB Available 88% Q2 2014 guaranteed living benefits were elected for $18.5 billions. GLB Elected 76% When GLBs are available election rate has been declining since 2012 from 90% to currently 75%. GLWB remains the most popular type of Source: LIMRA benefits representing 82% followed by GMIB for 13%. VA Assets with GLB elected 900 Others GMIB GLWB 800 700 Assets in bln 600 VA assets with GLBs growing steadily VA assets with GLWB assets elected represents 62%. 500 GLWB assets increased 2.5 times since the end of 2009 vs 1.75 increase in the S&P 500. 400 Very little increase for other types of GLB. 300 200 100 0 Q4 2008 Q4 2009 Q4 2010 Q4 2011 Q4 2012 Q4 2013 Q2 2014 Source: LIMRA. 4 2 28/11/2014 InsCo equity derivatives option position FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Total current exposure through S&P 500 puts in $ mln < 1.5y 1.5y - 5y > 5y Notional 75,041 17,250 19,629 Delta (6,058) (2,165) (3,417) Vega 72 60 147 Avg strike 75% 65% 64% Largest position relative to the overall equity derivatives market is created by S&P 500 puts, specifically on the long term. Largest vega position. Large forward position Total gamma exposure : $ 600 mlns Source: Schedule DB S&P 500 vega bought per quarter for maturities > 5y 25 175% 22.4 21.4 Vega Traded in $mm 155% 145% 15 12.8 13.5 135% 125% 10 115% 6.1 6.0 3.9 5 1.7 5.1 105% 95% 2.9 85% 0.8 0 75% 2011Q4* 2012Q2* 2012Q4* Vega traded (mlns) 2013Q2 SPX perf (RHS) 2013Q4 Performance Since 30 Sep 2011 165% 20 The amount of long term S&P 500 vega bought by insurance companies has significantly decreased since the end of 2012 . This is inline with the rise of the Equity market and long term interest rates. 2014Q2 10Y Rates perf(RHS) Source: Schedule DB 5 Impact on S&P500 long term volatility FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Long term S&P 500 volatility has decreased significantly since 2012 as well. S&P500 volatility still has a steep term structure that appeared mid 2005. S&P 500 implied volatility over the last 10 years 60% 1y 50% 5y in 5y 40% 30% 20% 10% 0% Nov-03 Nov-04 Nov-05 Nov-06 Nov-07 Nov-08 Nov-09 Nov-10 Nov-11 Nov-12 Nov-13 Nov-14 Source: BNP Paribas. Past performance is not indicative of future performance 6 3 28/11/2014 Comparison on implied volatility term structure FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Current implied volatility term structure Implied volatility 30% Implied volatility term structure significantly different across the main indices : 25% S&P 500 term structure is very steep 20% EuroStoxx50 term structure is close to flat and compared to EuroStoxx50 and Nikkei. S&P 500 15% EuroStoxx50 below S&P 500 beyond 5 years. Most long term structured products on EuroStoxx50 are sellers of volatility. Nikkei On average Nikkei implied volatility is higher and close to flat. It exhibits a slight dimple around the 5y maturity, the standard maturity of Uridashis. 10% 0 2 4 6 8 10 Maturity in years Source: BNP Paribas 5y in 5y minus 1y implied volatility spread 15% 10% The difference between S&P 500 and EuroStoxx50 term structure increased after the 2008 financial crises : Increased long term put buying from InsCo on 5% S&P 500. Since 2008, given the level of interest rates, 0% long term structured products on EuroStoxx50 are volatility sellers to generate attractive coupon. S&P 500 -5% EuroStoxx50 -10% Nov-03 Nov-05 Nov-07 Nov-09 Nov-11 Nov-13 Source: BNP Paribas. 7 End users of long term volatility across regions FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS US market : Variable annuities living benefits GLxB policy holder is buying an exotic put from the insurance company. Very long effective maturity Insurance company hedging driven economic & regulatory Europe and Japan : Structured notes Retail clients 100% Capital Protection Standard structure : Zero coupon + buy a call option Private banking clients Conditional capital protection : 65% to 85% barrier Standard structure : Reverse convertible : Zero coupon + sell a put option Auto callable is a very popular variation ( Uridashi in Japan) Investing in Notes could result in trading losses. please refer to the risk disclaimer on page 14 for more details. 8 4 28/11/2014 Auto-callable structured notes FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Auto-Callables are the most popular long term structure sold to end investors in Europe and Asia over the last few years. On Observation Dates (typically yearly), if the Index is above its Initial Level, a high coupon is paid and the structure ends early. If at maturity, the Index has not dropped below a predefined level and the structure has not been terminated early the investor gets his principal back However, if the Index dropped below the predefined level at one point before maturity the investor ends up long the index rather than cash. Typical scenarios for auto-callable structures Cancelled with coupon Synthetically the note buyer is selling a strip of puts spread across maturities weighted by the probability of early redemption at that date. To hedge the seller (IB) has to Sell long term volatility Buy long term forwards 100 Long the index at maturity Barrier Observation 1 Investing in Notes could result in trading losses. please refer to the risk disclaimer on page 14 Observation 2 Observation 3 Observation 4 (Maturity) Source : BNP Paribas. Graphical illustration is included for illustrative purposes only 9 European structured product market FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Number of issuance per capital protection type SPs issuance by Capital Protection From 2007 to 2009, higher level of protection of initial capital invested due to the increase in risk aversion Since then, with a sustainable low rates environment, higher proportion of structures with invested capital at risk (pre Lehman proportion) Source: BNP Paribas Source: BNP Paribas Number of issuance per maturity SPs issuance by Maturity Higher proportion of longer maturity issuances from 2009 and 2011 to compensate the low rate / risk aversion (high level of capital protection) environment Resilient number of short maturity issuances since 2009 Source: BNP Paribas 10 5 28/11/2014 Implied dividend and financing rate FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Current implied dividend term structure 145% 135% S&P 500 125% EuroStoxx50 Difference between S&P500 and EuroStoxx50 implied dividend term structure reflects the flow of end users On S&P500, IBs have to sell delta (TR) and buy back the dividends to hedge the puts they sold to InsCo. 115% 105% Inversely on EuroStoxx IBs have to buy delta 95% (TR) and sell back the dividends to hedge the puts they bought through structured notes. 85% 75% 2014 2015 2016 2017 2018 2019 2020 2021 2022 2023 Source: BNP Paribas. Past performance is not indicative of future performance 7 year implied financing cost 7y TRS spread above Ibor3m in % pts 1.2 1.0 S&P 500 0.8 EuroStoxx50 0.6 Difference between S&P500 and EuroStoxx50 on long term implied financing rate reflects the flow end users. 0.4 On EuroStoxx50 IBs have to carry the long 0.2 delta position on their balance sheet. Recent change in regulation has made that more expensive. 0.0 -0.2 On S&P 500, InsCo synthetically provide a -0.4 -0.6 Nov-11 flow of long term index performance. May-12 Nov-12 May-13 Nov-13 May-14 Source: BNP Paribas. Past performance is not indicative of future performance 11 Fixed Annuity Sales over time FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Over the last 10 years fixed annuity sales have been roughly stable. But Indexed Annuities went from 16% to 60% of total Fixed Annuity sales Fixed Annuity Sales per quarter over the last 10 years 35 30 Indexed MVA Fixed Book Value $ Billions 25 20 15 10 5 0 2003 1Q 2004 1Q 2005 1Q 2006 1Q 2007 1Q 2008 1Q 2009 1Q 2010 1Q 2011 1Q 2012 1Q 2013 1Q 2014 1Q Source: LIMRA. 12 6 28/11/2014 Indexed Annuity Market Overview FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Indexed annuities now firmly established as the second largest annuity segment (beyond variable annuity, 3x FA market) Sizeable issuance growth of 7.8% annual rate since 2007 Coming changes which could increase the FIA size: Low interest rates are driving a search for yield and players with alternatives strategies are becoming prominent Baby boomers nearing retirement are nearing peak age for IA sale Sales from 2004-05 (peak year before introduction of IA income rider) are about to exit the surrender charge period US Indexed Annuity Issuance ($Bn) Top 10 2Q2014 YTD Issuance Volumes ($Bn) 50 Allianz Life Security Benefit Life American Equity GAFRI Athene USA Midland National Life ING EquiTrust Symetra Financial Fidelity & Guaranty Life 45 40 35 30 25 6,605 2,352 1,913 1,560 1,185 899 854 816 735 696 Top 10 2Q2014 Issuers Market Share 20 15 10 5 0 Source : BNP Paribas. Winks * 13 Indexed & Indexed Universal Life market trends FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS 2014 thus far one the most active year for new products with 22 new indexed annuities introduced to the market by 6 carriers in Q2 alone S&P 500 still the most common crediting allocation (51%) but down from 66% in Q2 2013. Hybrid Indices are now 2nd at 31%. Gradual increase toward hybrids exemplify market interest for innovative strategies delivering uncapped crediting. As of Q2 2014, 21 carriers offering indices beyond S&P 500 for indexed annuity and 27 carriers for Indexed Universal Life. Annual point-to-point crediting represents 50% of sales. Monthly point-to-point distant 2nd at 16% Majority of surrender periods at 10y ( 59%). But 7y surrender period sales increased to 16% from 5% in 2013. 14 7 28/11/2014 Indexed Annuity Most Popular Underlying FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Increased competition encourages providers to look for differentiation Security Benefit was the 1st to place FIA linked to custom indices Custom Indices International Indices Euro Stoxx 50 – Allianz, American General, ING FTSE 100 – Allianz Hang Seng – Aviva, Sagicor, Midland National iShares MSCI HK Index Fund – Phoenix Life Nikkei 225 American General, National Western 3% 5% Transparent Value Blended Index Morgan Stanley Dynamic Allocation Allianz Athene S&P Risk Control Shiller Barclays CAPE Index ForeThought Fidelity & Guaranty Life Symetra American Equity 35% Barclays US Dynamic Balance DJIAAllianz, American Equity, Athene, Midland, Phoenix Life Russell 2000 – Allianz, Ameritas, Midland, Sagicor S&P Midcap 400 – Midland Nasdaq 100 – Allianz, Midland, Phoenix Life, Americo Financial Barclays ARMOUR II Gross USD 7% ER DJ US Real Estate Risk Control 10% S&P Average Daily Risk Control 5% S&P Dividend Aristocrats 5% Risk Control 58% 0.46% +Source: Annuity linked Trader VIC Index From 4Q 2013 to 2Q 2014 MSCI EAFE – Ameritas Life 72% Non S&P Domestic Security Benefit Life: 21% S&P 500 is still the dominant index with around 60% of the market shares in the EIAs sold in the US 6% BNP Paribas, Wink S&P 500 US Domestic ex-S&P500 International Custom indices 15 Volatility target overlay : methodology FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS To create a viable product for a fixed index annuity, new indices usually included a volatility target overlay. A volatility target overlay adjust the exposure to the underlying assets with the aim of achieving a target volatility The volatility control deleverages underlying exposure when volatility is rising and leverages when volatility is falling Exposure not allocated to the underlying assets is allocated to a synthetic overnight cash If realized volatility < Target Increase underlying exposure Set a target level for volatility Overall volatility ~ Target volatility Observe underlying realized volatility If realized volatility > Target Decrease underlying exposure Exposure= ோ௭ௗ ௧௧௬ ்௧௧௧௬ Source: BNP Paribas, for illustration purposes. 16 8 28/11/2014 Why a Volatility Target overlay? FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Advantages Drawbacks • Stable & predictable option price with little dependency on market conditions • No extra premium paid for implicit volatility Efficient Option pricing Innovation • Expands the underlying assets universe • Trading an option is possible even if the underlying index has no or very illiquid volatility market Offering benefit • Sales differentiation. • Extension of the distribution channel. • Persistent product offering • No cap on the crediting strategy Correlation • Volatility target overlay can between have negative index and consequences in raging its volatility bull markets or in low volatility bearish trends Education • IMOs & agents • End client Liquidity • Option market is less liquid than S&P 500’s option market 17 Volatility Target Overlay : Specification FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Underlying S&P 500 Target Volatility 15% Observation Period 20bd and 60bd Rebalancing Frequency Daily Maximum Exposure 200% Tolerance 10% Daily calculation of the annualized Realized Volatility of the Reference Index over the last 20 & 60 business days Daily calculation of the Target Exposure : Target Exposure Target Volatility max( 20bd Volatility, 60bd Volatility) Daily comparison of the Target Exposure to the Current Exposure If the exposure is < 100%, the remainder of the portfolio is invested in cash If the weight is > 100%, leverage is provided to the Underlying subject to the Maximum Leverage level If the difference is > Tolerance, readjust to Target Exposure 28/11/2014 18 For Institutional Investors Only – Not For Use With Retail Investors, Not Intended for Further Distribution 9 28/11/2014 Hedging Volatility Target Overlay FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Risk of simple delta hedging for option on indices with Volatility Target overlay : Volatility of volatility risk Jump risk. Underlying / Fixed income correlation risk Realized volatility of S&P 500 with and without 15% volatility target overlay 200% Exposure (rhs) 45% 60bd rlz vol 180% 40% 60bd rlz vol with overlay 160% 35% 140% 30% 120% 25% 100% 20% 80% 15% 60% 10% 40% 5% 20% 0% Jan-02 Exposure Volatility 50% 0% Jan-03 Jan-04 Jan-05 Jan-06 Jan-07 Jan-08 Jan-09 Jan-10 Jan-11 Jan-12 Jan-13 Jan-14 Source: BNP Paribas, for illustration purpose. 19 Risks & considerations related to Notes investments FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS Purchasing the Notes involves a number of risks. Prospective investors should reach a purchase decision only after careful consideration with their financial, legal, accounting, tax and other advisors regarding the suitability of the Notes in light of their particular circumstances. The following highlight some, but not all, of the risk factors in purchasing the Notes. An investment in the notes is subject to the credit risk of the issuer. The actual or perceived creditworthiness of the issuer may affect the market value of the Notes. Certain built-in costs are likely to adversely affect the value of the Notes prior to maturity. The price, if any, at which the issuer will be willing to purchase the Notes from investors in secondary market transactions, if at all, will likely be lower than the original issue price and any sale prior to the maturity date could result in a substantial loss. The tax consequences of the Notes may be uncertain. You should consult your tax adviser regarding the U.S. federal income tax consequences of an investment in the Notes. The investor does not benefit from dividends of any securities comprising the underlying asset. For Auto-Callable Features: The Note may be early redeemed one time at the sole discretion of the Issuer and the investor will receive 100% of the invested principal plus an Early Redemption Premium. No further payments will be made on the Notes. For Knock-in puts: Risk of partial or total principal loss at maturity if the worst performing Index closes below the Knock-Out Barrier on the Final Valuation Date. A knock-out Event, and thus Redemption Amount at maturity, is not determined until the Final Valuation Date. 20 10 28/11/2014 Important Information FOR INSTITUTIONAL INVESTORS WHO ARE ELIGIBLE CONTRACT PARTICIPANTS ONLY - NOT FOR USE WITH RETAIL INVESTORS This material is for informational purposes only and is not intended to be a complete and full description of the discussion involved. Additional information is available upon request. Neither the information nor any opinion contained in this material constitutes a recommendation, solicitation or offer by BNP Paribas or its affiliates to buy or sell any security, futures contract, options contract, derivative instrument, financial instrument, or service, nor shall it be deemed to provide investment, tax, legal, accounting or other advice. All opinions, information, and estimates in this material constitute BNP Paribas’ or its affiliate’s judgment as of the date of this material. This material is only intended to generate discussions regarding particular instruments and investments and is subject to change, or may be discontinued, without notice. This material should neither be regarded as comprehensive nor sufficient for making decisions, nor should it be used in place of professional advice. Information contained herein is derived from sources generally believed to be reliable, but no warranty is made that such information is accurate, complete or fair and should not be relied on as such. The risk of loss associated with futures and options trading, and trading in any other products discussed in this material, can be substantial. Investors considering options trading may wish to review the Options Disclosure Document: Characteristics and Risks of Standardized Options at (http://www.optionsclearing.com/publications/risks/riskchap1.jsp). The information on this website is not part of or incorporated by reference in this document. The risk of loss in trading options and other derivatives can be substantial. Options involve risks and are not suitable for all investors. This brief statement does not disclose all the risks and other significant aspects in connection with transactions of the type described in this document Neither BNP Paribas, persons connected with it, affiliates of BNP Paribas, nor any of their respective directors, partners, officers, employees or representatives accepts any liability whatsoever for any direct or consequential loss arising from any use of these materials or their content. The information in this material is not intended for distribution to, or use by, any person or entity in any jurisdiction where (a) the distribution or use of such information would be contrary to law or regulations, or (b) BNP Paribas or a BNP Paribas affiliate would become subject to new or additional legal or regulatory requirements. BNP Paribas is incorporated in France with Limited Liability. Registered Office 16 boulevard des Italiens, 75009 Paris. BNP Paribas Securities Corp., an affiliate of BNP Paribas, is a U.S. registered broker-dealer and a member of FINRA, the NYSE and other principal exchanges. © BNP Paribas, All Rights Reserved. THIS DOCUMENT IS FOR THE GENERAL INFORMATION OF BNP PARIBAS’S CLIENTS AND IS A GENERAL SOLICITATION OF DERIVATIVES BUSINESS FOR THE PURPOSES OF, AND TO THE EXTENT IT IS SUBJECT TO, §§ 1.71 AND 23.605 OF THE U.S. COMMODITY EXCHANGE ACT. 21 11 VARIABLE ANNUITY (“VA”) PRODUCTS PRICING CHALLENGES AND ISSUES 10th Annual Equity Based Insurance Guarantee Conference (Chicago) Session 1B: November 17, 2014 (1045 – 1215 hours) Amit Ayer Executive Summary Tactical challenges and issues with VA pricing Elements of VA Pricing Framework - Tactical Principle A B Description Presence of Presence of living benefit rider places increased pressure on living benefit adequate pricing framework Risk-neutral VA pricing framework is cumbersome because it must be and real-world performed using risk-neutral and real world frameworks frameworks Impact Rider Reserves Profitability Hedging Charge / Capital C Multiple risk Heterogeneity in risk management incentives necessitates VA management pricing functions to be agile and flexible incentives D Accounting Heterogeneity in accounting frameworks necessitates VA asymmetries pricing functions to be agile and flexible on capital E Projection of Reflecting hedging in pricing remains an arduous process with hedging in a range of practices pricing F Pricing and Even robust pricing of VAs cannot withstand prolonged capital markets with high realized volatility markets Significant impact to pricing Insignificant impact to pricing 2 1 Executive Summary Strategic challenges and issues with VA pricing Elements of VA Pricing Framework - Strategic Principle Description Rider Reserves Impact Charge / Capital Profitability Hedging G Pricing Lack of convergence around pricing metrics makes VA pricing Metrics process more difficult H Scrutiny on VA writers are able to meet pricing targets, but greater scrutiny pricing on pricing targets is warranted targets I J K L VA The deficiencies in VA disclosures should be further disclosures investigated and improved Volatility Pricing of target volatility funds requires care and impact on managed statutory requirements should be further analyzed funds Exchange offers have demonstrated success across VA VA Exchange markets to eliminate liabilities from balance sheet through offers various offers VA Rejuvenated VA reinsurance market offers more flexibility with reinsurance regard to VA pricing frameworks market Significant impact to pricing Insignificant impact to pricing 3 Agenda Interdependencies between VA pricing components Challenges and Issues with VA pricing Lack of convergence around VA pricing metrics and anomalous pricing results Shortcomings with GAAP/IFRS ROE profitability metrics Reactions to VA pricing difficulties Questions and answers 4 2 INTERDEPENDENCIES BETWEEN VA PRICING COMPONENTS Interdependencies between VA pricing components require an optimal risk-return balance Background Traditional product pricing exercise searches for premium rate that meets desired profit target Despite same fundamental objective for variable annuities, VA pricing exercise is much more complicated because of presence of living benefit rider Four elements of VA pricing process are intertwined and influence each other Rider charge • • Rider charge set with long-term view Industry unlikely to factor to resetting GLB rider charge on frequent basis Reserves / Capital • • Profitability affected by interest earned on reserves / capital and changes in reserves / capital levels Many companies opt for stochastic projections of reserves / capital Hedging • Profitability • • Sensitive to market conditions and policyholder behavior Warrants analysis of not just expected value but also tail events • • Hedging implemented to reduce economic risk, and directly affects the reserve / capital requirements and profitability Warrants analysis of not just expected value but also tail events Economic, GAAP and statutory considerations 6 3 CHALLENGES AND ISSUES WITH VA PRICING Presence of living benefit rider places increased pressure on adequate pricing framework A B C Living benefit rider materially changes risk profile of base VA contract Dimension 1 Profitability 2 Risk profile VA Base Contract Living Benefit Rider 5 6 Risk Management Contribution to risk of rider • Roughly equivlavalent probability of upside • Increases risk of making large guaranteed payments, loss and gain since base product passes most of investment risk to policyholders on separate • M&E fee only, with no volatility in separate 3 Dragaccount value accounts Reserve and capital requirements F investments • No embedded derivatives Policyholder behavior E • Without the living benefit rider, profitability • Driven primarily by performance of underlying relates to accruing fees that are adequate to cover expenses and death claims 4 D with low upside gain • Embedded derivatives • Increased drag on account value from rider fees and potential downward movements in separate accounts • Minimal • Living benefit rider contributes higher degree of • Dependent on equity long term expected • AG43 and C3 Phase-II requirements (while uncertainty around policyholder behavior volatilities for reserve and capital charges • Typically not hedged principles based) are higher in presence of living benefit rider • Cost of hedging (economic, GAAP, statutory, or combination) Significant impact to risk profile Insignificant impact to risk profile 4 VA pricing framework is cumbersome because it must be performed using riskneutral and real world frameworks (1/2) A B Common approach to risk neutral pricing in VA pricing (illustrative) 180 160 PAD / Profit 4 120 Cost of Hedging 3 100 Real world pricing (reserves / capital) 2 Basis Points (bps) 140 80 60 40 20 Risk Neutral Pricing / “Economic Hedge Cost” 1 0 VA product (rider fee and base contract) 1 C D E F Risk neutral valuation • Almost all companies make a provision for the risk neutral cost of the rider in pricing • Business can be priced at today’s market conditions, the product could be sold for up to two years – Profitability results for business priced today are by definition already stale tomorrow Observations • • Note – reflection of hedging in VA pricing is covered in Issue #5 Two primary approaches in generating risk-neutral scenarios – Use current market conditions to develop riskneutral scenarios to calculate rider cost – Use long-term estimates to generate risk-neutral scenarios to calculate the rider cost Three methods used to set implied volatility for later tenors – Grade from longest-credible market-observable tenor to target value – Hold level at longest-credible market-observable tenor – Use level volatility throughout (e.g., long term9 estimates) VA pricing framework is cumbersome because it must be performed using riskneutral and real world frameworks (2/2) A B Common approach to real-world pricing in VA pricing (illustrative) 180 160 PAD / Profit 4 120 Cost of Hedging 3 100 Real world pricing (reserves / capital) 2 Basis Points (bps) 140 80 60 40 20 0 Risk Neutral Pricing / “Economic Hedge Cost” 1 VA product (rider fee and base contract) 2a D E F Real-world pricing “Expense” items 1 2 2b Economic Hedge Cost Hedge Effectiveness Description • Incorporated as an “expense” in base product pricing through real-world scenarios • Provision for hedge ineffectiveness by allowing portion of real-world claims to flow through their integrated base product and rider pricing Reserves / Capital 1 Less refined Description • Develop set of factors that may vary on product feature, duration, ITM • Real-world scenarios to project reserve / capital 2 More refined requirements • Open considerations: number of scenarios, time steps 3 4 Note – reflection of hedging in VA pricing is covered in Issue #5 C Cost of hedging is calculated using a variety of methods, implemented as en expense throughout base product pricing (cannot lock in hedging costs today) PADs are an additional buffer for deviations away from 10 expected loss (i.e., unexpected losses, which is consistent with definition of capital) 5 Heterogeneity in risk management incentives necessitates VA pricing functions to be agile and flexible • There are three primary views of living benefits products, yet only one can be hedged at a time – Fair value based (IFRS or economic) – Statutory earnings and capital – GAAP earnings • The market sensitivities for the same product, captured by the “Greeks,” are markedly different depending on the view taken • Rho (interest sensitivity) is a significant driver of the difference between the standards A B C D E Impact of behaviour assumptions on Delta (illustrative) Delta Varying market sensitivity by accounting perspective Illustrative policy with moderate investment risk +/- 65% +/3% Point Estimate liability Delta Trading strategy tolerance F Behavioral uncertainty Observations Sensitivity of measure • While companies have made significant improvement “Un-hedged” economic exposure under a “GAAP SOP03-1” program Economics “Theta” Stat GAAP FAS 133 GAAP SOP03-1 “Rho” “Vega” in managing policyholder behavior risk in recent years, the amount of variability around a Delta point estimate for an illustrative product is significant • The interaction between pricing and hedging becomes more difficult with variable annuities with the large policyholder behavior uncertainty present in many of the largest VA blocks today • While C-suite at many companies have mentioned policyholder behavior is under control for VA blocks, it is interesting that many of these carriers are moving to VAs without living benefits1 1 “Delta” Lincoln Financial, Investor Day Sept 2014 11 Note: “Greek” estimates based on 10bps parallel change in interest rates, 1.0% change in implied volatility, 1.0% change in equit y levels Heterogeneity in accounting frameworks necessitates VA pricing functions to be agile and flexible A Context / Background D E F + Reduced reported earnings volatility GAAP - Under hedged GMDB and GMIB liabilities - Increased statutory capital volatility + Replicates the “fair value” of the embedded guarantee + Allows for reasonable future return on policyholder behavior assumptions Economic - Short-term volatility in statutory capital / reporting earnings - Under-hedged to shocks in equity markets against statutory capital model - Cost/resource intensive Biggest risk for three hedge approaches + Static downside protection against shocks to statutory capital + Less costly than economic hedge Statutory - Underhedged to rates - Volatility in GAAP earnings - Hedge not economic in less volatile markets - Tend to rely on longer dated option markets Shock Up Advantages Overview of Hedge Approaches Disadvantages C A wide range of accounting and regulatory frameworks support a broad array of goals for variable annuity hedging programs Statutory Shock Down B GAAP Equity markets Economic Interest Rates Shock Down Shock Up 12 Source: Credit Suisse, 2012 6 Accounting differences for same product can create pricing pressures due to distortions in capital outcomes A Context C D E F Two variable annuity contracts with same liabilities One is accounted for using FAS 133 Other is accounted for using SOP 03-1 GAAP Liability value Hypothetical GAAP liability under interest rate stress scenario Additional liabilities in stress scenario Additional capital FAS FAS SOP SOP Insurer A B Insurer A Insurer B FAS 133: carrying at fair value SOP 03-1: carrying at “least present value” of cash flows SOP 03-1 improves capital position Insurer B FAS 133: market interest rate assumption SOP 03-1: “real world” interest rate assumptions SOP 03-1 reduces interest rate sensitivity 13 Reflecting hedging in pricing remains an arduous process with a range of practices Reflection of hedging in pricing models is not uniform across insurers A B C D E F Hedging approach generally impacted by a number of factors, including: – Accuracy of results – Complexity of implementation, validation, inputs and analysis – Computational demands (software and hardware) Range of practices Description 1 Reinsurance • Assume that portion of claims along real world projection is reinsured 2 Change in Liabilities 3 Proxy of hedge transactions 4 Explicit projection of hedging Transactions Sophistication Accuracy • Hedge payoff is some assumed percentage of change in liability • Make Black-Scholes approximation on value of hedge assets along real world scenario • Full nested stochastic projection 14 7 Even robust pricing of VAs cannot withstand prolonged markets with high realized volatility A B Disconnect exists between real world scenarios used to project statutory balance sheet items and risk neutral scenarios used to project change in market value of hedges Higher implied volatility levels will increase the cost of hedging associated with Delta hedging C D E F Statutory requirements for GMAB policy – impact of dynamic hedging with index futures Observations Statutory requirement 140 • 120 • 100 80 60 40 AG43 requirement increases with Delta hedging strategy, requiring no required capital. AG43 requirement with a Delta hedging strategy displays high sensitivity to implied volatilities, as Delta positions are sensitive to changes in implied volatility. 20 0 Unhedged 10% vol 15% vol AG43 Reserves 20% vol 25% vol 30% vol 35% vol Required Capital 15 LACK OF CONVERGENCE AROUND VA PRICING METRICS AND ANOMALOUS PRICING RESULTS 8 Lack of convergence around pricing metrics makes VA pricing process more difficult G General observations H I J K L Rider cost coverage, statutory IRR, and statutory VNB margins are the most prevalent primary metrics Statutory earning / capital strain and return on assets (ROA) are other significant metrics While there is not one “correct” VA pricing metric, the variability of metrics across the industry is expansive Rider charge / hedge cost 12 10 8 GAAP ROE typically promulgated in investor disclosures 6 4 2 0 Rider cost coverage Statutory IRR on capital Statutory VNB Statutory Market margins earnings/capital consistent VNB strain ROA ROE Statutory capital/EAR 17 Source: Towers Watson 2013 Pricing Survey VA writers are able to meet pricing targets, but greater scrutiny on pricing targets is warranted GAAP/IFRS Pricing Targets and Minimums G 20.0% 15.0% 10.0% 5.0% 0.0% 15th Mean 85th US GAAP/IFRS ROE - Target US GAAP/IFRS ROE - minimum tolerable Statutory Pricing Targets and Minimums 20.00% 15.00% H I J K L General observations Companies reported significant differences between pricing targets and minimum tolerable levels Companies pricing on a GAAP/IRFS basis tended to have higher target ROEs than overall industry statutory IRR figures Companies are more apt to accept lower hedge cost minimum due to low interest rate environment GAAP/IFRS ROEs are often inflated (discussed during next section) 10.00% 5.00% 0.00% 15th Mean 85th Statutory IRR on Capital - target Statutory IRR on Capital - minimum tolerable 18 Source: Towers Watson 2013 Pricing Survey 9 SHORTCOMINGS WITH GAAP/IFRS ROE PROFITABILITY METRICS Issues with GAAP VA general account balance sheet GAAP variable annuity general account balance sheet Commentary 1000 800 600 400 200 GAAP value of guarantee fees Net MV hedge assets 0 Assets • SOP 03-01 guarantees DAC Valuation based on non-market assumption is at odds with an economic viewpoint • FAS 133 guarantees Disconnected from liability valuation H I J K L • Inconsistent accounting treatment for 1200 Assumptions locked in at issue; relies on mean reversion G • identical economic cash flows • GMIB/GMDB vs. GMWB • Rider vs. base contract Inconsistent assumptions across different companies • DAC mean reversion assumptions • Different assumptions around application of FAS 157 Lack of transparency as to value and in some cases the performance of the hedge position Little transparency around “sources of earnings” • Inconsistent definition of where results appear (Net Income vs OCI) Liabilities 20 10 Background on VA “opaqueness” around variable annuity writers G H I The Insured Retirement Institute's study found a lack of disclosure among annuity manufacturers around their investment hedging strategies is depressing stock valuations J K L UBS Securities Managing Director Andrew Kligerman – “Investors want to know more about the effectiveness and cost of hedging, the sensitivity of VA products to equity markets and interest rates, and where excess capital is going” – “Clearly greater transparency is needed in the industry, which will improve investors’ perception as to the sectors’ strength and unlock capacity for growth” Failing to meet investor expectations around transparency is largely due to companies viewing their strategies as proprietary, thus providing full transparency may place companies at competitive disadvantage 21 Articulation of “Opaqueness” Discount • U.S. life insurers continue to trade at material discounts to G H I J K L reported GAAP book value and exhibit low price / book ratios compared to rest of the financial services industry 22 Source: Factset, company reports, UBS (6/30/12) 11 Major deficiencies in current VA disclosures G Deficiency Description • Provide little visibility into new business profitability • Insurers do not communicate the underlying capital markets 1 Little transparency into the value of new business 2 Performance of the business over time cannot be tracked many insurers have introduced modified earnings definitions that leverage existing GAAP calculations • Modified definitions are still rooted in GAAP concepts with all attendant shortcomings. 3 Lack of credibility of true tail risk protection • During the financial crisis, some insurers with large VA exposures 4 Disconnect between economic valuations and GAAP and Statutory frameworks assumptions behind these stated ROEs • In an attempt to foster greater understanding of their financial results, suffered substantial capital calls forcing them to raise capital when valuations were at a trough. • Price to GAAP Book multiples for valuation benchmarks have limitations Inconsistent valuation of liabilities Asset valuations geared to capital markets (not all DAC assets are created equal) – – H I J K L Impact • Full disclosures could help investors understand that they have cheaper, and certainly more transparent, vehicles to take these types of capital markets positions • Adjusted performance measures have often left investors even more confused and skeptical of companies’ assertions of satisfactory VA performance • Current disclosures do not provide investors adequate assessment of whether a given business is well protected against such ill-timed capital calls going forward. • The framework can leads to instances where risk management decisions can inappropriately influence reserve levels, with the effect that reserves can increase as a result of more hedging Elements of better VA disclosures In order to address these issues, a framework for better VA disclosure needs to accomplish four things: Area of Improvement G H I J K L Description • Portray new business profitability through objective metrics that can be compared across 1 Prove new business written is profitable 2 Demonstrate the effectiveness of hedging • Allow the assessment of how much slippage has incurred between the hedge portfolio and the 3 Support valuation of the in force business • Provide pertinent information to investors to better assess the risk-adjusted economics of the in- 4 Investors’ dislike for VAs is indiscriminate companies and linked to overall capital efficiency goals liability target, and how much unhedged positions have moved force to inform valuations • Establish that under harsh, yet conceivable, stress scenarios, the combination of hedging, reinsurance and other balance sheet resources is sufficient to protect key capital ratios These disclosures should improve transparency to the financial performance of VA blocks and enable investors to make informed judgment on proper valuation and ultimately reduce the opaqueness discount. 24 12 REACTIONS TO VA PRICING DIFFICULTIES Pricing of target volatility funds requires care and impact on statutory requirements should be further analyzed G H Volatility managed funds and other new product features are now common feature to reduce benefit cost and/or reduce challenges associated with hedging Dimension 1 2 3 Cost of guarantee Statutory Hedging Benefits of volatility managed funds I J K L Considerations of volatility managed funds • Potential for moderate reduction in economic losses • Cost of guarantee lowered, but heavily dependent on • Downside protected from fund rebalancing mechanisms, algorithm of volatility managed fund preserving account value and lowering claims • Minimal • Impact on statutory requirements is minimal compared to • Delta sensitivity is lowered markedly with volatility • Material reduction in Vega exposure offers strong benefits managed funds impact on economics from risk management standpoint 13 Case study parameters on volatility managed funds G Modeling of rebalancing strategies (static versus historical volatility) Static strategy – – – H I J K L Model specifications asset allocation between equity and bond is fixed (75% equity 25% bond) at each time step equity return >> bond return, sell equity and buy bond bond return >> equity return, purchase equity and sell bond “Exponentially Weight Moving Average” – allocation between equity and bond depends on historical annualized rolling portfolio volatility – weighting of more recent returns more heavily (exponentially weighted) – at each time step, historical annualized volatility is compared to a target volatility (15%) VIX – Based on stochastic projection of VIX index Interest rate Two-factor Hull-White Volatility Heston Projection period 40 years Rebalancing frequency Monthly *Correlation between equity and interest rates Product specifications Issue age 55 Starting AV $100,000 Rollup rate 3% Rollup frequency Monthly Ratchet Annually for 10 years Withdrawal rate 5% Contract fee 1.81% MER fee 0.85% 27 Impact of volatility managed strategies on Greek sensitivities G Vega changes most materially relative to a static strategy $100 H I J K L $80 $60 $40 $20 $0 -$20 -$40 Reserve Delta Gamma Rho Vega EWMA Reserve Rho VIX Reserve Vega Potential impact of target volatility strategies Greek Delta Reserve Gamma Static • • • • • • • • Reduction in dollar Delta Less transactions in equity futures, reducing transaction costs and cost of hedging Reduction in dollar Gamma for VIX strategy Mitigate hedge breakage during market volatility (Gamma or gap risk is typically not hedged) Reduction in dollar Rho Less transactions of interest rate swaps/Treasury futures in low interest rate environment Significant reduction in Vega Reduce need to enter into long dated puts or variance swaps 28 14 Exchange offers have demonstrated success across VA markets to eliminate liabilities from balance sheet through offers G H I J K L Assessment of exchange offer target Modern designs Older designs Size / Homogeneity Mitigating adverse selection Variance in economic vs perceived value Overall assessment for offer Commentary target Guaranteed Minimum Death Benefit • • Guaranteed Minimum Accumulation Benefit • • • • Guaranteed Minimum Withdrawal Benefit (non-lifetime) • • Relatively homogeneous, typically return of premium Lower perceived value than lifetime withdrawal benefit Guaranteed Minimum Income Benefit • Not homogeneous, as older regimes require election of annuitization not present in modern designs Target older regimes of income benefits that require election of annuitization, as perceived value is likely lower compared to more recent regimes Guaranteed Minimum Lifetime Withdrawal Benefit • • • • Subject to anti-selection if policyholders have non-uniform health status Typically have low perceived value compared to economic value, in particular for enhanced death benefits Enhanced death benefits are excellent offer targets Relatively homogeneous, with low expected lapse rates Low perceived value compared to intrinsic value Benefits that are past surrender charge and are close to expiry are excellent offer targets Variety of designs makes product heterogeneous Highly lapse supported product makes mitigating adverse selection difficult High economic values (rich features) and high perceived values (lifetime income desired) make for poor offer targets 29 Significant characteristics across dimension Some characteristics across dimension Minimal characteristics across dimension Rejuvenated VA reinsurance market offers more flexibility with regard to VA pricing frameworks G 1 H I J K L Markets Description Reinsurers • Highly rated reinsurers are increasingly inquisitive about VA risks due to following reasons: – Improve transparency around policyholder behavior frameworks – Improved transparency around GAAP/IFRS profitability targets – Emphasis on “sustainable products” with continued emphasis on volatility managed funds that afford policyholder up-side 2 Banks • Increased potential for diversification for reinsurers • Most of the broader reinsurance market we have spoken with has expressed interest in variable annuity products • Increased transparency being impetus for increased demand to take on risks in VA contracts • Union Hamilton / Wells Fargo reinsurance deal for one of Lincoln’s largest living benefit rider started in 2013 • Banks have expressed similar inquisitions into taking on VA risks The increased demand for VA reinsurance will certainly alter the VA product development and / or pricing landscape 30 15 APPENDIX The standard cash flows involved in a variable annuity contract are depicted below Variable Annuity – key cash flow diagram Policyholder Deposit Advisor Commission (Initial + Trailer) Expenses (e.g., Marketing, Maintenance) Insurance charge General Account Rider charge Initial Commission Trailer Commission Investment Management Fee IMF = Investment Management Fee Separate Account Variable Annuity – key cash flow descriptions Cashflow Insurance charge Rider charge Administrative Charges Admin charge Surrender Charge IMF Revenue sharing Investment manager Surrender charge Description • Paid by insurer to adviser at policy issue • Typically ~ 5% of deposit • Paid by insurer to adviser in Years 2+ while business is inforce • Typically 0.5% – 1%. May be a function of deposit or AV • Fee charged for the management of the funds in policy • Typically 150 – 200 bps of AV • Investment manager shares IMF with insurer • Sometimes called M&E • Typically 10 – 20 bps of AV • Fee to support rider • Ranges between 50 – 100 bps of GV • Fee for contract admin; usually $30 • Paid by policyholder to insurer in the event of lapse (to compensate for commissions paid) • Typically 7 – 8%; declining by 1% pa 32 16 Elements of pricing framework will help companies maintain profitability in variety of economic scenarios Robust VA pricing framework will help companies maintain profitability in variety of economic scenarios Dimension 1 GLB rider charge 2 Profitability of contract 3 Reserve / Capital requirements 4 Impact of hedging 5 VA reinsurance market Description Solution • Adequacy of GLB rider charge should be addressed on an on-going basis • Contract profitability should be analyzed through stochastic scenarios with focus on both mean and tail results Focal Point • Risk neutral valuation • Stochastic simulation, with focus across variety of CTE(x%) • Impact of reserve and capital requirements • Utilize inner loop functionality, using real world should be integrated into profit analysis of scenarios to determine capital adequacy base contract • Hedging impact should be analyzed in profit analysis • With increased demand for VA reinsurance solutions, pricing frameworks should understand landscape of reinsurers and banks in market • Variety of approaches available, with most sophisticated being inner-loop nested stochastic scenarios to simulate payoff of hedge assets • Reinsurance can help reduce tail risk or diversify existing VA block of business Significant impact to pricing Insignificant impact to pricing 33 Today, the most common type of guarantee is the Guaranteed Minimum Withdrawal Benefits (GMWB) and Income Benefit (GMIB), which are similar ROP GMWB – Policyholder taking regular withdrawals Strong market performance can increase account value… …but persistent withdrawals tend to reduce it over time Withdrawals incur guarantee claims Withdrawals reduce account value Age /Time Account value ROP benefit base Policyholder withdrawal from account value Policyholder withdrawal funded by insurer (i.e., claim) Guarantee description Insurer provides policyholder with a guaranteed withdrawal amount that never declines and continues for life Insurers incur guarantee claims equal to all withdrawals once the account value is exhausted Withdrawals can be fixed in number (e.g., 20 withdrawals permitted for 5% withdrawal rate) or allowed for the lifetime of the insured 17 Consistency of VA guarantee valuation A Issue / context B C D E F Currently, FAS 133 is used for valuation of most Guaranteed Minimum Withdrawal Benefits (GMWB) and Guaranteed Minimum Accumulation Benefits (GMAB), while SOP 03-01 is used for all other GMxBs – FAS 133 produces valuations more consistent with economics, larger in magnitude and more sensitive to market changes – SOP 03-1 produces valuations that are starkly different than the economics, smaller in magnitude and less market-sensitive Two VA contracts with highly similar risk and value characteristics could receive very different values in the stress test Outline of alternatives This could create significant differences in stress test results for two insurers with similar long-run risk and value profiles Description Status quo Apply market consistent treatment for all VAs • FAS 133 for valuation of most GMWBs and GMABs, SOP • FAS 133 for all VAs • Fees are not capitalized 03-1 for other GMxBs • Fees are not capitalized Pros (+) / Cons (−) + Consistent with current GAAP accounting framework – Inconsistent treatment of liabilities with similar risk profiles – SOP 03-1 valuation is inconsistent with “economics” + Consistent accounting treatment of all VAs + Aligned with actual “economics” – Requires additional work by supervised insurers – Relies on unaudited financials 35 Prove new business written is profitable G H Provide the product’s ROE if full capital markets hedging were utilized (in other words an ROE that is not geared to capital market risks, or “fully hedged” ROE), in addition to the ROE using their own individual hedging strategy, across a number of market scenarios Interest Rate Scenario Spread Scenario June 2012 rates frozen for 5 Single A staying at 100 bps above years then rising 50 bps per Treasury year across term spectrum Single A staying at 100 bps above June 2012 rates frozen until June Treasury 2014, then rising by 1% p.a. for 10 yrs, then frozen again Single A widening to 150 bps above Treasury by 2014 Interest rate term structure Single A staying at 100 bps above remains frozen at current 2012 Treasury levels Equity Scenario 0% p.a. 2% p.a. 4 % p.a. 0% p.a. ROE – hedged as planned …. …. …. I J K L ROE – fully hedged …. …. 2% p.a. …. 4 % p.a. …. …. …. 0% p.a. 2% p.a. 4 % p.a. 36 18 11/28/2014 Pricing Considerations for VA and FIA/IUL Products Tim Hill, Principal, Milliman 10th Annual Equity Based Insurance Guarantees Conference (Chicago) Session 1B: 17 November, 2014 (1045 – 1215 hours) 1 Fixed Indexed Annuities: Historical Sales Historical US Annual Fixed Indexed Annuity Premium (in billions) 50 $47 45 $39 $ billions 40 35 $30 30 $23 25 $27 $25 $25 $32 $32 $34 $27 20 15 $12 10 5 $3 $4 $5 $6 $14 $7 0 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 (ann) YTD Q2 2014 FIA sales were $23,453 million, a 38% increase over YTD Q2 2013. 2 Source: Wink, Inc. 1 11/28/2014 Fixed Indexed Annuities: Top Ten Companies YTD Q2 2014 Rank Company YTD Q2 2014 (millions) Market Share Change from YTD Q2 2013 1 Allianz Life $6,605 28.2% 175% 2 Security Benefit $2,352 10.0% 13% 3 American Equity $1,913 8.1% -3% 4 Great American $1,560 6.7% 43% 5 Athene USA $1,185 5.1% -11% 6 Midland National $899 3.8% 11% 7 ING $854 3.6% 65% 8 EquiTrust $816 3.5% -18% 9 Symetra $735 3.1% 68% 10 Fidelity & Guaranty $696 3.0% 41% Source: Wink, Inc. 3 Q2 2014 FIA Sales by Channel Q2 2014 • The Agency Channel (independent agents) dominates the FIA market, with an 80% market share in Q2 14. • Compared to Q2 13, the Q2 14 market share of the Bank channel increased by 3.3 percentage points, to 11.1%, at the expense of the Agency channel. The B/D channel share also picked up 3 percentage points. • The bank channel experienced a decline in market share from the previous quarter, going from 13.5% in Q1 14 to 11.1% in Q2 14. • Q2 13 market share: Q2 2014 Premium: $12,566 million Career 4% B/D 5% Bank 11% Agency 80% Agency: 87.3% B/D: 1.6% Bank: 7.8% 4 Career: 3.3% Source: Wink, Inc. 2 11/28/2014 Top Five FIA Sales Leaders by Channel Q2 2014: Top Five Indexed Annuity Sales Leaders by Channel Agency Bank Wirehouse Career 1. Allianz 1. Great American 1. ING 1. CNO Companies 2. Security Benefit 2. Allianz Life 2. Allianz Life 2. American General 3. American Equity 3. Protective 3. Nationwide 3. Nationwide 4. Athene USA 4. Lincoln 4. Protective 4. Horace Mann 5. Midland 5. Security Benefit 5. Lincoln 5. Pacific Life 5 Bonus FIAs: Quarterly Market Share Trend 100% 81% 78% 75% 73% 64% 71% 71% 71% 69% 74% 76% 75% 75% 64% 70% 70% 77% 75% 75% 68% 67% 66% 66% 50% 25% 0% Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2 Q3 Q4 Q1 Q2 09 09 09 09 10 10 10 10 11 11 11 11 12 12 12 12 13 13 13 13 14 14 In Q2 14, 66% of fixed indexed annuity sales offered a premium bonus, compared to 68% in Q2 13. Premium bonuses on the account value ranged from 0.50% to 12% in Q2 14. Source: Wink, Inc. 6 3 11/28/2014 Fixed Indexed Annuity Trends Sales by Surrender Period: In Q2 14, 59% of FIA policies were sold with a 10-year surrender charge schedule – 7-yr schedule increased from 4.7% of FIA policies sold a year ago to 16.2% in Q2 2014. Average Issue Age: The average issue age reported for Q2 14 FIA sales was age 63. Average Premium: The Q2 2014 average FIA premium was $82,114, representing a 1% increase from the previous quarter, while it ranged from $17,363 to $125,272. Guaranteed Lifetime Withdrawal Benefits (GLWB): Approximately 63% of all FIAs offer a GLWB (Q2 13: 72%). Approximately 29 FIA companies offer GLWBs. – Roll-ups range from 2% to 14%, offered on both a compound and simple interest basis. – The average GLWB rider charge is 0.84%. 7 Source: Wink, Inc. Fixed Indexed Annuity Sales through Banks Q2 2014 Fixed Indexed Annuity sales through the Bank channel reached $1.72 billion, just below the recent record high of $1.77 billion set in Q4 13, and 1% behind Q1 2014. Compared to Q2 2013, volume has increased 62%. The FIA share of total bank fixed annuity premium in Q2 2014 was 32.5%, compared to 31.6% in Q1 2014 and 33.1% in Q2 2013. After five consecutive quarters of increasing market share, the bank share of total industry FIA sales declined to 13.2%, compared to the high of 15.4% in Q1 2014. (Reported by BISRA; numbers reported by Winks differ, although the decline from Q1 14 to Q2 14 is also noted by Winks.) 8 Source: BISRA 4 11/28/2014 Fixed Indexed Annuities: Top Ten Companies selling through the Bank Channel – Q2 2014 Rank Company Q2 2014 Sales (in millions) 1 Great American $364 2 Symetra Financial $337 3 Allianz Life $334 4 Protective Life $140 5 Lincoln Financial $125 6 Pacific Life $102 7 ING $101 8 AIG $96 9 Jackson National $30 10 Genworth Financial $28 Source: BISRA 9 What Does a Bank FIA Look Like Surrender Charge 5 or 7 year surrender schedule: 9, 8, 7, 6, 5% or 9%,8,7,6,5,4,3 10% free withdrawal provision May have return of premium Minimum surrender value: 100% at 1% minus SC Interest Crediting Accounts Fixed Account Some indexed accounts based on S&P 500 Perhaps an alternative such as bond index or something else Commission 3.0% to 4.0% commission for 5-year product, 4.0% to 5.0% of premium for 7year Extended care waiver, terminal illness waiver Optional riders GLWB Rider – 0.75% to 0.95% annual charge (of benefit base), 6 – 8% roll-up credit, 10 to 20-yr income roll-up period. Attained Age based payout factors with 5.0% at age 65. 10 5 11/28/2014 Important Pricing Issues Yield Curve environment / duration calculation Option Payoff assumption Base Lapse / Dynamic Lapse (both interest sensitive and GLWB impact) Policyholder utilization of GLWB Changing nature of products Upfront bonus may not be a must have "Stacking" GLWBs Actuarial Guideline 33 Annuity 2012 table 11 Indexed Life: Historical Sales Historical US Annual Indexed Life Premium (in millions) 2,000 $1,803 1,800 1,600 $1,356$1,392 1,400 1,200 $973 $ millions 1,000 800 $696 $512 $539 $531 600 $352 400 200 $64 $62 $63 $84 $186 $99 $101 $139 0 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 (ann) YTD Q2 2014 Indexed Life sales were $697 million, a 9% increase over YTD Q2 2013. 12 Source: Wink, Inc. 6 11/28/2014 Indexed Life: Top Ten Companies YTD Q2 2014 Rank 13 Company YTD Q2 2014 (millions) Market Share Change from YTD Q2 2013 1 Pacific Life Cos. $86.0 12.3% -0.6% 2 Aegon $64.7 9.3% 41% 3 National Life Group $61.3 8.8% 25% 4 Minnesota Life $48.6 7.0% 30% 5 Allianz Life $33.8 4.9% 23% 6 Midland National $33.5 4.8% 52% 7 Zurich Life $33.0 4.7% 9% 8 Lincoln National $31.0 4.4% 62% 9 Nationwide $30.8 4.4% 46% 10 AXA US $27.6 4.0% -35% Source: Wink, Inc. Q2 2014 Indexed Life Sales by Channel Q2 2014 • The Agency Channel (independent agents) is the dominant channel in the indexed life market, with a 65% market share in Q2 14. • Compared to Q2 13, the Bank and Broker/Dealer channels’ market share picked up slightly, mostly at the expense of the Career channel. • Q2 13 market share: Q2 2014 Premium: $367 million Career 19% Agency 65% B/D 14% Agency: 65.7% B/D: 12.5% Bank: 0.8% Career: 21.0% Bank 1% 14 Source: Wink, Inc. 7 11/28/2014 Top Five Indexed Life Sales Leaders by Channel Q2 2014: Top Five Indexed Life Sales Leaders by Channel Agency Bank Wirehouse (B/D) Career 1. Pacific Life 1. Pacific Life 1. Aegon 1. AXA US 2. Midland National 2. National Western 2. Nationwide 2. CNO Group 3. National Life 3. Nationwide 3. Minnesota Life 3. National Life 4. Allianz 4. Lincoln 4. Pacific Life 4. RiverSource 5. Minnesota Life 5. American National 5. Lincoln 5. Minnesota Life 15 Indexed Life Sales Trends Sales by Surrender Period: In Q2 14, 51% of Indexed Life policies were sold with a 9- to10-year surrender charge schedule. The next most popular surrender period was 15 years, garnering a 33% market share. Average Issue Age: The average issue age reported for Q2 14 Indexed Life sales was age 42. Average issue age ranged from 31 to 52 years old. Face Amount/Policy Count: The average face amount in Q2 14 was $428,904, with individual carrier results ranging from $83,292 to $1,471,835. The overall policy count for Q2 14 was 81,889 policies. Average Indexed UL Target Premium: The Q2 2014 average Indexed UL target premium was $6,367, representing a 30% decrease from the previous quarter, while it ranged from $1,110 to $17,538 16 Source: Wink, Inc. 8 11/28/2014 Important Pricing Issues for IUL Policyholder behavior Persistency and premium persistency Option Payoff assumption Illustrations Simplified Underwriting Use of loans and rate charged on loans Accelerated death benefits 17 9 11/28/2014 Risk Managed Funds 10th Annual Equity Based Insurance Guarantees Conference (Chicago) Session 2A 1330 – 1500 hours Marshall C. Greenbaum, CFA, ASA AnchorPath Financial, LLC November 17, 2014 For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. Disclaimer Past performance is not a guarantee of future performance. Investment returns and principal values will fluctuate, so an investor's account value may be worth more or less than their original deposits. Recipients must make their own independent decisions regarding any strategies, securities, investments or financial instruments mentioned herein. AnchorPath uses derivatives, such as options and interest rate futures, the effect of which is included in the performance. AnchorPath Financial, LLC (“AnchorPath”) is an SEC registered investment adviser. The client is referred to Form ADV Part 2A for more information regarding AnchorPath. SEC registration does not constitute an endorsement of the firm by the Commission nor does it indicate that the adviser has attained a particular level of skill or ability. This document does not constitute an offer, invitation or recommendation to subscribe for or purchase any services, security or financial product. This document is being circulated on a restricted and confidential basis, is solely for the purpose of providing information about AnchorPath and its strategies and is not, and should not be construed as, a recommendation of AnchorPath. AnchorPath does not make any representations that the products or services are suitable or appropriate for the recipient. The information in this document is confidential and must not be reproduced or disclosed, in whole or in part, to any other party without the prior consent, in writing, from AnchorPath. In preparing this document, AnchorPath has relied on information which is publicly available and sources believed to be reliable. This information has not been independently verified by AnchorPath. This document does not purport to contain all of the information that the recipient may require to evaluate any investment strategy and does not take into account the investment objectives, financial situation or particular needs of the recipient. Each recipient should conduct its own independent investigation and assessment (and is responsible for its own costs in so doing) of the contents of this document and of the economic, financial, ERISA, regulatory, legal, taxation and accounting implications for the recipient. Each recipient acknowledges that it is not relying on this document in considering the merits of any particular transaction. Except as required by law, AnchorPath and its respective directors, officers, employees, agents and consultants make no representation or warranty as to the accuracy, completeness, timeliness, fairness or reliability of the information in this document, and accept no liability under any circumstances for any loss or damage whatsoever arising as a result of any omission, inadequacy, or inaccuracy in this document or otherwise arising in connection with it. This document may contain certain forward-looking statements, forecasts, estimates, projections and opinions (“Forward-Looking Statements”). No representation is made or will be made that any Forward-Looking Statements will be achieved or will prove to be correct. Actual future results and operations could vary materially from the Forward-Looking Statements. Each recipient acknowledges that circumstances may change as a result of many events or factors, not all of which are known to AnchorPath or within its control, and the contents of this document may become outdated as a result. The AnchorPath strategy involves significant risks due to, among other things, the nature of the investments utilized in the AnchorPath strategy. Any discussion of risks contained herein with respect to any product or service should not be considered to be a disclosure of all risks or a complete discussion of risk involved. In considering information contained in this document, recipients should bear in mind that there can be no assurance that the AnchorPath strategy will be able to implement its investment strategy and investment approach or achieve its investment objective. For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 2 1 11/28/2014 Agenda Risk Managed Fund Terminology Advantages of Risk Managed Funds Risk Managed Fund History and Evolution Review 3 Risk Management Strategies: Constant proportional portfolio insurance (CPPI) Risk parity Volatility control Emerging Approaches Example: Ohio National Risk Managed Balanced sub-advised by Janus & AnchorPath Q&A For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 3 Risk Managed Fund Terminology Risk Management is not synonymous with Risk Monitoring Numerous types of approach and terms in the marketplace Generic: risk-managed, managed-risk, systematic, rules-based Volatility based: risk control, managed volatility, target volatility, volatility control Allocation based: dynamic allocation, multi-strategy, multi-asset, risk parity, risk balancing Option based: portfolio insurance, constant proportional portfolio insurance (CPPI), capital protection strategy, collar, floor-leverage Other: sector rotation, high watermark, tail-risk, smart beta, managed payout, exotic beta, momentum, liquid alts, derivatives overlay, risk management overlay, … For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 4 2 11/28/2014 Risk Managed Fund Main Concept Most risk managed funds employ some form of Dynamic Allocation between risky and non-risky assets Many attempt to forecast risk as the basis for reducing equity exposure Some use absolute fund performance to determine equity allocation Many only rely on rebalancing asset classes within broad ranges Some use financial options (e.g. put contracts) For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 5 Risk Managed Fund Benefits for VAs Risk managed funds can enhance VA products in multiple ways By reducing rider benefit guarantee costs hedge cost to the insurer reserves and capital charges By stabilizing ongoing reserves and capital charges M&E fee revenue For the policyholder its allows for surrender of a policy when markets are down without potentially forfeiting significant value of the guarantee benefit rider Allows for products without explicit guarantees while still providing valuable risk management to policyholders For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 6 3 11/28/2014 History of Key Risk Managed Strategies 1973: 1976: 1980: 1982: 1986: Black Scholes option pricing model Portfolio Insurance developed Portfolio Insurance implemented S&P 500 index futures contract introduced $60b+ managed using Portfolio Insurance Constant Proportional Portfolio Insurance (CPPI) developed Market crash discredits Portfolio Insurance because of futures market dislocation Risk-parity developed Listed & OTC Options markets grow Long Term Capital demise; period of high volatility Principal Protected Funds launched Internet bubble Financial crisis through 2009 Principal protected, target-date, managed payout funds discredited by the financial crisis Risk/volatility control indices launched Volatility control poor performance scrutiny Risk-parity poor performance scrutiny Prevalence of risk managed funds/offerings in the marketplace 1987: 1996: 1997: 1998: 1999: 2002: 2008: 2009: 2011: 2013: 2014: For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 7 Risk Managed Strategies: CPPI CPPI Payoff is path-dependent Set Floor Level Typically an amount to provide principal protection at a horizon date Zero coupon bond Reference curve can be used Distance = Portfolio Value less Floor Level Set a “Cushion” rate Typically set such that risky asset portfolio expected not to drop before rebalancing opportunity, example 20% Risky asset allocation = Distance / Cushion At inception with 90% floor; risky allocation = (100% - 90%) / 20% = 50% Remainder invested in fixed interest assets Adjusts allocation to risky assets as portfolio changes value For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 8 4 11/28/2014 Risk Managed Strategies: CPPI Portfolio Value CPPI Illustration Portfolio with variable allocation between Risky Assets & Fixed Interest Assets 100% Distance relative to Portfolio Value Zero Coupon Bond Reference Curve 0% Maturity Time For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 9 Risk Managed Strategies: CPPI Pros Relatively simple Easily implemented Provides floor protection Cons Equity allocation can go to zero and remain there Good early performance drives returns in many good performing scenarios Objective of principal protection at single horizon is not ideal for most investors Exposed to “gap” (i.e. market crash) risk For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 10 5 11/28/2014 Risk Managed Strategies: Risk Parity Diversify risk and return by equalizing asset class volatility Leverage resulting portfolio to desired level of risk Two asset class example: Portfolio Volatility Equity 15% Bond 5% Correlation Traditional Equal Risk Equal Risk 2x Leverage 60% 25% 50% -0.35 40% 75% 150% Total Exposure 100% 100% 200% Expected Volatility 8.5% 4.25% 8.5% For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 11 Risk Managed Strategies: Risk Parity Expected Return Risk Parity Portfolio (levered) Tangent Portfolio Risk Parity Portfolio (un-levered) Expected Standard Deviation For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 12 6 11/28/2014 Risk Managed Strategies: Risk Parity Pros Worked well in many market cycles Easily implemented Greater emphasis on real assets/commodities for potential diversification Cons Short term performance will be poor in quickly rising interest rate scenario Low interest rate environment can make entry point important May not protect against systemic allocation shift from risky assets to cash No explicit downside protection For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 13 Risk Managed Strategies: Volatility Control Seeks to achieve a target volatility of portfolio returns Generally use recent (typically 60-90 days) backward-looking calculation to predict current volatility Scale equity allocation based on the volatility prediction Equity Allocation = Target Volatility / Predicted Volatility Remainder invested in cash Equity allocation capped at 150% for S&P Daily Risk Control 10% Index For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 14 7 11/28/2014 Risk Managed Strategies: Volatility Control S&P 500 Index and realized volatility since 2008 2008 150 2009 2010 2011 2012 2013 2014 Financial crisis and summer 2011 are notable recent periods with significant equity drawdowns and escalated volatility levels S&P 500 USD Total Return Index ( 6/3/2008 = 100 ) S&P 500 Daily Risk Control 10% USD Total Return Index ( 6/3/2008 = 100 ) S&P 500 Daily Risk Control 10% USD Total Return Index ( 1/1/2011 = 97.55 ) 125 100 50 125% Equity Allocation Cash Allocation Risk Controlled Index SPTR Index 80% Allocation 100% 60% 75% 40% 50% 20% 25% 0% Volatility (60 day EMAvg) 75 0% Sources: AnchorPath, Bloomberg, Dow Jones & Co See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 15 Risk Managed Strategies: Volatility Control Volatility has been controlled but protection has been inconsistent Realized volatility of the risk control index has been relatively stable, with much less variation than the S&P 500 Index In 2008, the risk control index avoided a large drawdown in comparison to the S&P 500 In 2011, the risk control index did not provide downside protection from the equity market downturn Sources: AnchorPath, Bloomberg, Dow Jones & Co See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 16 8 11/28/2014 Risk Managed Strategies: Volatility Control Risk control benefit is highly dependent on entry point Risk controlled index performance has significantly lagged the S&P 500 since 2011 The risk control index cannot avoid drawdowns when volatility increases abruptly Sources: AnchorPath, Bloomberg, Dow Jones & Co See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 17 Risk Managed Strategies: Volatility Control Pros Easily implemented Can reduce/stabilize cost of options compared to uncontrolled index Can provide downside protection Cons May not work in sudden market moves, lag can cause negative skew Possibility of large allocation to cash Investors seek good returns, not simply stable volatility Poor recent performance For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 18 9 11/28/2014 Emerging Integrated Approaches Learn from the past and improve on prior approaches Integrate multiple strategies Avoid “gap” risk Invest in volatility rather than control it Adapt market risk/derivatives management techniques employed by investment banks and insurance companies Pursue more robust investor objective than simple principal protection For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 19 Integrated Risk Management In Practice Fund Example: Ohio National Risk Managed Balanced (RMB) for illustration purposes only RMB fund strategy integrates multiple risk management approaches Peers* encompass risk managed funds following strategies such as volatility control, risk parity, low vol, tactical allocation, etc. Risk/Return Metrics (5/1/14-10/31/14) RMB Fund Peer Minimum Fund Peer Maximum 5.8% -2.3% 7.8% 11.8% -4.5% 16.0% Volatility (annualized) 5.4% 4.6% 9.4% Sharpe Ratio 2.1 Return (cumulative) Return (annualized) Max Drawdown -3.3% -0.8 -8.8% For the period, RMB fund had the highest Sharpe ratio among peers 1.8 -4.1% *As of October 31, 2014. Performance based on daily returns of funds since RMB inception May 1, 2014. Peer Group comprises all funds in the Managed Volatility Portfolios (MVPs) category that are available in Ohio National's individual and group variable annuity products Source: AnchorPath, Morningstar Past performance is not a guarantee of future performance See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 20 10 11/28/2014 Integrated Risk Management In Practice Fund Example: Ohio National Risk Managed Balanced (RMB) for illustration purposes only The fund is managed in two components Balanced Component is managed by Janus Risk Management Component (RMC) is managed by AnchorPath Risk/Return Metrics (5/1/14-10/31/14) RMB Balanced Component 5.8% 4.1% 11.8% 8.3% Volatility (annualized) 5.4% 6.0% Sharpe Ratio 2.1 1.4 -3.3% -4.3% Return (cumulative) Return (annualized) Max Drawdown *As Since inception, the RMC has enhanced return, reduced volatility and limited drawdown compared to a straight investment in the Balanced Component* of October 31, 2014 Source: AnchorPath, Morningstar Past performance is not a guarantee of future performance See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 21 Integrated Risk Management In Practice Performance surrounding July, 31 2014 when S&P 500 dropped 2% in one day for illustration purposes only Period: 7/8/14 – 8/8/14 Bal. Comp. - 1.0% RMC Contr. +0.9% RMB fund -0.1% The gain in the RMC almost exactly offset the decline in the Balanced Component Risk/Return Metrics (5/1/14-10/31/14) RMB Balanced Component 5.8% 4.1% 11.8% 8.3% Volatility (annualized) 5.4% 6.0% Sharpe Ratio 2.1 1.4 -3.3% -4.3% Return (cumulative) Return (annualized) Max Drawdown *As Multiple risk management techniques contributed to the offset over the period of October 31, 2014 Source: AnchorPath, Morningstar Past performance is not a guarantee of future performance See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 22 11 11/28/2014 Integrated Risk Management In Practice Performance during October 2014 market volatility for illustration purposes only The interplay of multiple techniques cushioned the drawdown at October 15th low Risk/Return Metrics (5/1/14-10/31/14) RMB Balanced Component 5.8% 4.1% 11.8% 8.3% Volatility (annualized) 5.4% 6.0% Sharpe Ratio 2.1 1.4 -3.3% -4.3% Return (cumulative) Return (annualized) Max Drawdown *As RMB fund performance demonstrates that a next-gen approach can add significant value of October 31, 2014 Source: AnchorPath, Morningstar Past performance is not a guarantee of future performance See Important Disclosures For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 23 Concluding Remarks Risk managed funds provide value to policyholders and insurers Diversity of risk managed fund strategies is growing Mandatory allocation to risk managed funds benefits policyholders and carriers Many being used in “investment only” VAs as a risk management feature Each market drop provides opportunity to differentiate managers and showcase the benefit of risk managed strategies For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 24 12 11/28/2014 Contact Marshall Greenbaum, CFA, ASA AnchorPath Financial, LLC 1266 East Main Street, Suite 700R Stamford, CT 06902 203-893-3600 [email protected] For Society of Actuaries 2014 Equity Based Insurance Guarantees Conference Use Only — Not For Public Viewing or Distribution This information is for discussion purposes only. See Important Disclosures in the document. 25 13 28/11/2014 Volatility Control – Optimising the overall product framework? Product providers are being asked to provide attractive guaranteed products within increasing risk management and capital constraints. Volatility control investments combined with capital protection can be viewed as an effective technique to help balance the requirements of all stakeholders: carriers, policyholders, markets and regulators. Stephen Einchcomb, RBS 10th Annual Equity Based Insurance Guarantee Conference (Chicago) Session 2A 17 November 2014 (1330 – 1500 hours) Building an Insurance Product – balancing the requirements of stakeholders Policyholders • • • Lifestyle Insurance Growth and protection Other tax-efficient savings Distribution Regulators £ • • • • • • • Preferred sales channel Advisor education Customer behaviour Insurance Product Financial Markets • • • Accounting Capital requirements Tax treatment Consumer Protection Carrier • • • Low rates Volatility management Re-insurance Risk and asset management Capital management Return on equity Product design influenced by factors external to the product provider Above charts are for illustrative purposes only. RBS00000 2 1 28/11/2014 Policyholders Lifestyle Insurance Desire for growth and protection due to loss aversion The Insurance Sector Overview of the two main archetypes of insurance Life / Pension Insurance £ Non-Life (Property & Casualty Insurance) £ Insurance is the transfer of risk from policyholder to insurer in exchange for a payment, the pooling of risk resulting in less uncertainty due to law of large numbers and the use of diversification across geography and across product lines Source: RBS, October 2014 4 RBS00000 Above charts are for illustrative purposes only. 2 28/11/2014 Life Insurance or Lifestyle Insurance Life insurance will fill the void left by declining Defined Benefit pension provision Defined Benefit Defined Contribution • Allowed individuals to have certainty and plan for retirement (e.g. 67% of final salary at 67). • Focus on tax-deferred accumulation not pension outcome • Limited risk management • Focus is on individual’s outcome. Non compulsory contribution rate. • • Contribution risk assumed by pension plan • Risks assumed by individual Life / Pension Insurance £ Lifestyle Insurance £ £ £ RBS00000 Above charts are for illustrative purposes only. Source: RBS, October 2014 5 Lifestyle Insurance - Demand for growth and protection Why would an individual want the financial markets to decide when and how you retire? • DC schemes at present do little to address all the “real-world” risks of retirement: – Longevity/Spending risk – an individual outliving their available pension savings – Purchasing power risk – the “real” pensionable amount being eroded by inflation/wage growth – Timing risk – short term market moves affecting the pension pot size close to retirement – Investment risk – getting the incorrect investment strategy leading to a reduction in pension pot. • Individuals risk aversion increases with age, suggesting some form of “life-styling” should be implemented . More importantly, evidence suggests that their loss aversion increases with age. Preference 50% of assets Protection Asset Management Equities Insurance Multi-asset Source: RBS, October 2014 6 Age RBS00000 Above charts are for illustrative purposes only. Fixed Income 3 28/11/2014 Demand for growth and protection – theory and evidence The desire to manage Loss Aversion leads to a protected growth strategy being optimal in certain circumstances. A large number of US annuity purchasers of annuities appear to agree. Annuity Sales Prospect Theory Assume Loss Aversion Target-driven “threshold” strategy. 64% of the US Annuity market has protected growth characteristics ($230bln market in 2013) “Threshold” Strategy Portfolio Insurance Strategy Utlity Function Fixed Annuity, 18% Target Purchasing Power VA (Funds only), 18% Level EIA (Annuity with index lined crediting), 18% VA (with Guaranteed Living Benefits), 47% Source: “Target-driven investing: Optimal investment strategies in defined contribution pension plans under loss aversion” David Blake, Douglas Wright and Yumeng Zhang. Source : LIMRA References Kahneman and Tversky (1979) Source: RBS, October 2014 7 RBS00000 Above charts are for illustrative purposes only. Policyholder recap Marketplace for lifestyle protected products is consistent with policyholder loss aversion : • Demand for lifestyle insurance through capital protected product is consistent with policyholder loss aversion. • Policyholder loss aversion has underlying economic drivers – Actual income level versus target income level. Target income level will vary with alternative provision (e.g. DB or state pensions). – Relative downside to upside aversion. • Focus of policyholder should be less on the investment returns rather and more on the lifestyle outcome – Policyholder investment insurance – Criticism of investment returns often takes no account of the protection received • Policyholders target is generally not geography specific. However the way those demands are met is very dependant on geography. – Government and corporate provision – Tax deferral incentives RBS00000 8 4 28/11/2014 Product Carriers/Providers Managing the policyholder demand for Portfolio Insurance Asset, risk and capital management Volatility control - volatility of volatility mitigation 10 Portfolio Insurance Strategies Capital protected Portfolio Insurance (PI) solutions can be devised to provide products with floors and market upside. They effectively convert convex obligations to policyholders into fixed future cash flows. Replication method Capital Key Carrier Risks Policy Costs X (no longer acceptable) Gap + Undefined economic Risk Premium Constant Proportion – CPPI (Perold 1986) Risk based Gap Slippage + Gap Protection Option Based - OBPI – Realised/Replicated Merton (1986) Risk based Gap + Realised Volatility slippage Premium + Gap Protection Counterparty (premium) Variable Cost Implied Volatility Realised volatility + gap + implied slippage Risk based Gap + Managed Costs Realised Volatility Target Volatility + Counterparty (premium) Fixed Cost Implied Volatility Target Volatility + Underwrite Option Based - OBPI – Implied/Out-sourced replictation Black-Scholes (1987) Targeted Risk Return - TRRPI – Realised Volatility Controlled OBPI (various late 1990’s/early 2000’s) Volatility Control Options – Implied Volatility Controlled OBPI Fixed Traditional Annuity Risk based Duration gap protection implied slippage Liquidity / Yield Source: RBS RBS00000 10 5 28/11/2014 Risk management: Delivering growth with protection Portfolio Insurance (CPPI, OBPI) CPPI Call options Active management (including gap) Options on dynamic assets (volatility control, dynamic indices) Put options Dynamic asset allocation Lifestyle / target date Hard protection: Underwritten downside protection Soft protection: Risk managed hard protection: Manager attempts to limit downside through asset management Risk adjusted asset management with underwritten protection RBS00000 11 Carrier risks when writing asset value protection Products carriers faces significant operating and capital risks when underwriting guarantees Asset Volatility Interest rates Value of future protected cash flow ~ PV( Probability of the cash flow ) Dividends Correlation Product design Switch to total return payoff Basis Biometric Limit choices (simplify) Re-insure Pooling 2nd Order Lapse Product design RBS00000 12 6 28/11/2014 Mitigating Volatility of Volatility – typical approach of FIA carriers 1. Volatility Controlled calls price variation v SPX call options 1. Volatility controlled options have significantly less price instability – price driven mainly by interest rates SPX (2Y ATM Call) 2. Point-to-point call spread prices are stable. Monthly arithmetic cliquets cap large asset returns. 15% 10% - directly through spread of long/short dated volatility 5% - continually through purchasing volatility options 0% Oct-04 Oct-06 Oct-08 Oct-10 Oct-12 10Y - 1Y realised (LHS) SPX (2Y ATM 100/110 Call Spread) 1M realised (RHS) SPX 10Y ATM-1Y realised Vol. Spread 20% Option Cost 25% 20% SPX 3M realised 0% 15% 10% 10% 20% 5% 15% 0% Oct-04 -5% 10% 30% Oct-06 Oct-08 Oct-10 -10% 5% Oct-06 Oct-08 Oct-10 Oct-12 Oct-14 3. Charge additional hedge costs back to policyholder 2. Call spread and lower volatility control ER options v SPX call options 0% Oct-04 9% VT ER 2Y ATM Option 20% 3. Charge the end policyholder the excess hedging costs SPX (2Y ATM Call) 5% VT ER 2Y ATM Option 8% VT TR 2Y ATM Option Option Cost 25% Oct-14 Oct-12 40% Oct-14 50% -15% 60% -20% 70% -25% 80% 13 RBS00000 Source all charts: RBS, October 2014 Carrier Recap Fixed Index Annuity carriers have responded to volatility risk through various methods • Volatility Controlled Underlying – Direct mitigation of volatility of volatility of the asset base – Uncapped upside – Multi-asset Dynamic Strategy • Capped point-to-point or cliquet offering – Access to liquid options market – SPX, NDX • Volatility/VIX based fee structures RBS00000 14 7 28/11/2014 Regulation and Distribution Solvency capital based on wholesale markets Consumer protection Innovation Regulation Regulation of insurance capital has involved from trust through to full open market valuation. Trust – based on the trustworthiness (and pockets!) of the underwriter. “I promise to … “ Ability – encouraged good asset management Be able to pay short term cash flow Effective asset management for longer dated liabilities Can ignore market moves to some degree Dependent on mean reversion and risk premium assumptions Solvency – encourages both good asst and risk management. Be short term market value solvent, based on market based Value at Risk measures Have sufficient contingency to transfer business in a short horizon (e.g. 1-year) Greater capital requirements Effective risk management Can not ignore market moves RBS00000 16 8 28/11/2014 Solvency II Higher capital requirements are leading insurers to target less capital-intensive products Surplus Surplus Surplus Free Assets Free Assets (Traffic Light) Solvency I Capital Requirement Reserves Assets (Book Value) Free Assets Solvency I.5 Capital Requirement (Discounted at guarantee) Assets Liabilities Solvency II Capital Requirement Risk Margin Assets (Market Value) Reserves: Best Estimate Liabilities Assets (Market Value) Reserves: Best Estimate Liabilities Assets Liabilities Assets Liabilities Low rates, low guarantees & high capital requirements, have led insurance companies towards a unit linked dominated offering Increased capital requirements for insurers exposures RBS00000 17 Distribution Consumer protection, advice, regulation, innovation, fees • Advice: Whole-life, whole-of-market review – Increasing consumer protection has also driven products to be simpler and more transparent – Is the product correct for your circumstances? Income, Savings, Risk. – In UK, market is influence by need to advice on an individual’s complete financial position and what is available • Regulation – Mis-selling – Are the terms and conditions of the policy fair? – Is the pricing fair and can it rise in the future? – Conflicts of interest • Innovation – Something new (new idea to sell), something old (but understandable by the policholder) – Consumer Education. (Example, volatility control is based upon a “risk budget” not a “notional budget”) – Asset and risk management combined is attractive proposition. RBS00000 18 9 28/11/2014 Merging the requirements Product innovation has been driven by risk benefit transfer Volatility control – shares the burden? Products: Driven by shifting policyholder/carrier risk tolerance Product development has alternated the “risk management benefit” between carrier and policyholder Policyholder Carrier Risk Benefit Traditional Risk management 1976-1986 With-Profits theoretical framework Product Portfolio Insurance 1987 Market Crash Crash risk/liquidity undervalued Proetcted Return Incorrect rate Falling Rates Protected Product option hedge Return Rate Adjusted Product Make VA more attractive No protection Vanilla Variable Living benefits Annuity Offered Market Volatility Living Undervalued Benefits Rates lows, Volatility high, ? lifestyle protection RBS00000 20 10 28/11/2014 Volatility Control – balancing the requirement of stakeholders Why we believe Volatility control is the leading risk management technique for product innovation • For the policyholder it offers innovative payout profiles with improved product economics, benefits may include: – Uncapped returns on multi-asset strategies – Embedded risk and asset management (include life-styling, risk-parity etc.) – Transparent option pricing – Short or long tenors • For the carrier – Mitigates volatility of volatility – Stability of pricing – Ability to plan risk management programs – Helps product design features • For the distributor – Innovative underlying – Attractive product choices • For the regulator – Market based risk management RBS00000 21 Please score the crediting mechanism. Crediting Type Volatility Control Index Upside Call Spreads Volatility linked fees Carrier Financial Markets Distributor Regulator Policyholder Cumulative Score RBS00000 22 11 28/11/2014 Pros & Cons of Volatility Control Strengths Limitations • • No discretionary overlay to change the investment strategy (strictly rules-based) • Potential underperformance versus a benchmark index in the presence of a positive spot volatility correlation (Potentially less returns in sharp rebounds) • Limited end investor knowledge and “risk” based investing • Volatility Control is designed to be more hedging friendly from the outset by potentially: – stabilising the cost of hedging over defined periods – reducing the cost of hedging – allowing hedging of longer tenors Can be customised to suit preferences with respect to: – risk/ return profiles (Volatility Target) – diversification & cross asset selection – static or dynamic asset allocation • Relevant concept given current market focus on risk management & cost efficiency • Greater product development flexibilities that may better meet the needs of investors – May require investor education – May require sales and infrastructure updates 23 RBS00000 The description may not include a comprehensive list of the associated risks Disclaimer This document is intended for and directed at professional investors only, where professional investor also means professional clients as defined by the EU Markets in Financial Instruments Directive. 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RBS00000 25 13 11/28/2014 Impact of Hedging on Capital and Reserves Date Alex Marion VP, Product Management, Numerix November 17th, 2014 Agenda • • • • • • • AG43 Overview Challenges Hedging Strategies Nested Stochastic Future Greeks Target Volatility Real World Models 25 1 11/28/2014 Challenges • Accounting mismatch – – – – GAAP versus Statutory Dynamic hedging strategies focus on economic risk Statutory calculations focus on surplus or deficiency A “good” GAAP hedging strategy may increase statutory reserves • Modeling Challenges – Simulating hedging requires integrated asset and liability model • Need model that captures all economic risks such as equity, rates, credit, and stochastic vol – – – – Nested stochastic simulation Scenario calibration requirements Computational challenge Managed volatility funds 25 Hedging Strategies • Dynamic Hedging Strategies – Goal is to manage GAAP financials and economic risk – Manage balance sheet locations due to mark to market of liability guarantees • Delta hedging – Immunize economic risk of being short an option – GAAP and Statutory sensitivity • Rho hedging – More focus for GAAP • Vega hedging – May not represent a true economic hedge – Expensive due to significant risk premia in volatility hedges – Little to no sensitivity for statutory reserves 25 2 11/28/2014 Holistic Risk Management • What is the right tradeoff between managing GAAP versus Statutory? • Understanding how hedging impacts balance sheet • Vega hedging may negatively impact CTE calculation • However, choice of hedges may reduce SS amount • Managed vol product features may reduce the burden for managing GAAP risk • Ability to project hedging strategies is highly valuable, and a critical for assessing risk across multiple reporting regimes 25 Nested Stochastic – Overview • The nested stochastic pattern: – Outer-Loop: real-world dynamics – Inner-Loop: risk-neutral dynamics 6 3 11/28/2014 AAA Scenario Generation • Equity market returns – Monthly SLV model for U.S. equity, international diversified equity, intermediate risk equity, and aggressive/exotic equity 7 Liability Projections Sample GLWB • Withdrawal rate based on age at withdrawal: 4%/5%/6% vs ages <65/75> • Annual ratchet; 5% simple annual rollup during deferral period up to 10Y • Rider fee is 0.70%; M&E is 1.20%; fund fees are assumed zero • AAA Real World Scenarios 25 4 11/28/2014 Liability Greeks 25 Target Volatility If an asset has predictable volatility, then you can construct a selffinancing portfolio with locally constant volatility • The portfolio consists of a risky-asset like the S&P 500 and a low-risk asset, here it is a constant maturity zero coupon bond • The allocation changes dynamically based on future expected volatility and the volatility target • The strategy includes some rebalancing frictions 5 11/28/2014 Target Volatility 10% Target Volatility strategy reduces future potential vega 25 Target Volatility + Capital Protection Adding capital protection further reduces claim vega 25 6 11/28/2014 Fee Indexing Dynamics Fee-indexing increases fees when volatility rises, typically linked to the VIX Index VIX Indexed Fees VIX indexed fees create positive vega in the fee leg, reducing overall total vega 25 7 11/28/2014 Stochastic Volatility and the Volatility Premium • NAIC allows use of alternative models that satisfy the calibration criteria • A real world extension of a stochastic volatility model provides a good candidate • Take for instance the real-world Heston (1993) model, ݀ܵ = (ݎ+ ߶ܸ)݀ݐ+ ܸܹ݀ ଵ ܵ ܸ݀ = ߢ ܸஶ − ܸ ݀ݐ+ ߦ ܸܹ݀ ଶ with < ܹ݀ ଵ, ܹ݀ ଶ > = ߩ. • Here, ߶ > 0 governs equity premia scaled with vol • Higher reversion and lower long-run volatility under real-world dynamics. 25 Calibrating Heston to NAIC Criteria • We can find a set of parameters that produces a model satisfying all the NAIC calibration criteria ܸஶ = 0.029, ߦ = 0.1, ߶ = 2.0, ߢ = 2.5 , ߩ = − 0.7 RW Heston Projection Percentiles Percentile 1 Year 5 Year 2.50% 0.77 0.68 5.00% 0.81 0.76 10.00% 0.87 0.88 90.00% 1.32 2.28 95.00% 1.39 2.58 97.50% 1.44 2.95 10 Year 0.74 0.87 1.10 4.02 4.79 5.51 20 Year 0.99 1.34 1.65 10.89 14.54 17.77 Numerix RW Heston minus NAIC Percentile 1 Year 5 Year 10 Year 20 Year 2.50% (0.01) (0.04) (0.05) 5.00% (0.03) (0.05) (0.07) (0.17) 10.00% (0.03) (0.06) (0.06) (0.45) 90.00% 0.04 0.11 0.39 1.87 95.00% 0.04 0.13 0.43 2.84 97.50% 0.02 0.23 0.39 * Based on 1000 scenarios over 30 years, monthly. 42 8 11/28/2014 Calibrating Heston to NAIC Criteria • Heston retains fit with fewer paths 500 Scenarios RW Heston Projection Percentiles Percentile 1 Year 2.50% 0.77 5.00% 0.80 10.00% 0.85 90.00% 1.33 95.00% 1.41 97.50% 1.47 100 Scenarios 5 Year 0.67 0.76 0.90 2.27 2.61 2.96 10 Year 0.71 0.89 1.08 4.04 4.83 5.81 20 Year 1.04 1.36 1.63 10.70 14.05 16.93 Numerix RW Heston minus NAIC Percentile 1 Year 5 Year 10 Year 20 Year 2.50% (0.01) (0.05) (0.08) 5.00% (0.04) (0.05) (0.05) (0.15) 10.00% (0.05) (0.04) (0.08) (0.47) 90.00% 0.05 0.10 0.41 1.68 95.00% 0.06 0.16 0.47 2.35 97.50% 0.05 0.24 0.69 RW Heston Projection Percentiles Percentile 1 Year 2.50% 0.78 5.00% 0.81 10.00% 0.83 90.00% 1.38 95.00% 1.46 97.50% 1.54 5 Year 0.72 0.75 1.01 2.21 2.49 2.93 10 Year 0.88 0.99 1.08 4.17 4.64 5.55 20 Year 1.06 1.23 1.63 10.72 11.97 13.90 Numerix RW Heston minus NAIC Percentile 1 Year 5 Year 10 Year 20 Year 2.50% (0.00) (0.00) 0.09 5.00% (0.03) (0.06) 0.05 (0.28) 10.00% (0.07) 0.07 (0.08) (0.47) 90.00% 0.10 0.04 0.54 1.70 95.00% 0.11 0.04 0.28 0.27 97.50% 0.12 0.21 0.43 42 The Nested Stochastic Pattern - Heston • Generate S and V according to real world Heston ݀ܵ = (ݎ+ ߶ܸ)݀ݐ+ ܸܹ݀ ଵ ܵ ܸ݀ = ߢ ܸஶ − ܸ ݀ݐ+ ߦ ܸܹ݀ ଶ with < ܹ݀ ଵ, ܹ݀ ଶ > = ߩ. • At each node, evolve S and V in a nested model according to risk-neutral Heston ݀ܵ = ݐ݀ݎ+ ܸܹ݀෩ଵ ܵ ܸ݀ = ߢ̃ ܸ෨ஶ − ܸ ݀ݐ+ ߦ ܸܹ݀෩ଶ with < ܹ݀෩ଵ, ܹ݀෩ଶ > = ߩ 25 9 11/28/2014 Real World Heston • Advantages of using real world Heston – Model consistency between outer loop and inner loops – Consistent dynamics may improve simulated hedging results – Analytic pricing for vanillas Hedge P&L Bleed with Black Model Heston is a Good Hedging Model Liability Liability Replicating Portfolio (Heston) Replicating Portfolio (Black) *this study simulates dynamic hedging for FIA 25 Thank You! Contact : Alex Marion, VP, Product Management [email protected] Follow : Twitter: @nxanalytics @Marion2025 LinkedIn: http://linkd.in/Numerix http://linkd.in/AlexMarionNx 10 11/28/2014 FAS157, AG36, and Aligning Accounting Methodology with Hedging Strategy 10th Annual EBIG Conference (Chicago) Session 2B 17 November 2014 (1330 -1500 hours) Brian Boucher, ASA Transamerica Life & Protection ALM/Hedging Group INTERNAL What is the Goal of Hedging? • The Quant answer – “To reduce the economic profit or loss impacts from current-period market movements to zero.” • The C-Suite answer – “To reduce the below-the-line earnings impacts from current-period market movements to zero.” • This presentation explores the difference in these two perspectives as it applies to IUL products 1 11/28/2014 Case Study: Product Summary • Universal Life Plan Features – Premiums net of insurance/expense charges accumulate AV – Level death benefit, cost-of-insurance charges proportional to NAR = Face - AV – Cash value at surrender is AV less charges during penalty period • Indexed Universal Life Plan Features – Index Account with annual point-to-point crediting based on XYZ index – Currently 0% floor, 12% cap, 100% participation rate – Cap is “floating” with 1% guaranteed minimum – Fixed Account crediting 3% (with 2% guaranteed) also available – Policyholder can reallocate funds at anniversary dates The General Principle of Hedge Accounting 170 160 150 Interest Earned in the current period reflects mark-to-market adjustments in that period alone. Interest Credited in the current period reflects index performance over a longer historical period. 140 130 120 110 100 90 Solution: Mark down liabilities on the balance sheet to offset negative spread. Current Reporting Period 80 2 11/28/2014 Case Study: Option Values • Assume 0.5% risk free rate and 2% dividend rate on XYZ index at issue date. – Floor = ATM 1-year call option @ 20% implied vol • Black-Scholes Cost of Floor = 7.15% – Cap = 112% OTM 1-year call option @ 17% implied vol • Black-Scholes Cost of Cap = 2.31% – Net Option Cost = 4.84% • If the index rises 5%, the net option value increases to 6.11% • If volatility increases 5% across the board, the net option value increases to 5.13% Short-Term or Long-Term Liabilities? 95% Survival Issue Date Valuation Crediting Date Date Policies surrendering in this period receive $0 payout Cash Value Becomes Positive 75% Survival • A policyholder pays $100 in premium… – Should the company hedge on $95 or $75? – If the policyholder lapses before CV > 0, they never actually receive the index credit, so economically the answer is $75 – less risk for the same payout. – But can the company’s accounting reflect that? • Consider… will $95 of crediting be realized as an expense before $20 is “collected” as surrender charge? 3 11/28/2014 AG36 and FAS157 FAS157 Embedded Derivative Value of Future Crediting Standard CRVM Reserve Actuarial Guideline XXXVI Reserve US Statutory Valuation FAS97 Benefit Reserve (Account Value) Value of Future Crediting Value of Past Crediting FAS157 Host IFRS/US GAAP Valuation Actuarial Guideline XXXVI • Background: Universal Life policies usually subject to CRVM under Standard Valuation Law – Conservative benefit reserve calculation using proscribed mortality assumptions (2001 CSO, etc) – Projects benefits under “guaranteed” assumptions, runs off against a stream of NLPs calculated at issue • AG36 provides 3 methods for valuing Indexed Universal Life deemed “consistent with CRVM” – Implied Guarantee Rate Method (IGRM) – Type 1 – Updated Average Market Value (UAMV) – Type 2a – Updated Market Value (UMV) – Type 2 4 11/28/2014 Actuarial Guideline XXXVI Methods • IGRM (Type 1) is a book value method – Must meet strict “hedged as required” criteria – As with CRVM, valuation rates determined at issue • UAMV and UMV (Type 2) are market value methods – No hedging requirement, although a company may still hedge – UAMV requires term 1 year, and may exclude higher caps/participation rates – UMV has no requirements – UAMV and UMV differ in treatment of index guarantees beyond the current year Actuarial Guideline XXXVI “Hedged as Required” Criteria • Allows for either – Static hedging with options (the “Basic” criteria) – Dynamic hedging with stock or futures (the “Option Replication” criteria) • Both require: – Decrementing notional amounts by < 6% per year – Specific plans for unexpected cash flows (surrenders etc) – Monitoring process for efficiency with stated tolerances • The Option Replication criteria also requires the hedge to be at least 90% effective in matching asset and liability movements • These criteria may be difficult for most companies to meet, or too restrictive if needs change. 5 11/28/2014 Actuarial Guideline XXXVI Illustration Additional death benefits add to CRVM reserve, if the life survives to this point Value of Death Benefit Face Value Funds allocated to the index account credit at 4.9% during this year only Issue Date Valuation Date Guaranteed Maturity Fund Value (Accrues at 2%) *Note that GMF accumulation assumes maximum charges, minimum crediting, and that lapse and surrender are ignored (mortality decrement only) Maturity Date Actuarial Guideline XXXVI Final Notes • Statutory concerned with orderly liquidation – Emphasis on guarantees – what you can do, not what you will do – Company can lower cap to 1%, policyholder can guarantee herself at least 2% in the fixed account • Simple exercise: What does $1 added to today’s fund value add to the CRVM reserve? – Apply this ratio to a standard option valuation, if index guarantees are short term 6 11/28/2014 Statement of Financial Accounting Standards No. 157 – Fair Value Measurements • 2007 US GAAP standard – parallels IFRS 13 • Clarifies “fair value” definition for instruments previously valued under FAS133 (such as IUL) • Differences with AG36 – – – – Best estimate assumptions for lapse/surrender/mortality Best estimate for index guarantees beyond current term Assumes no future premiums paid (no GMP/NLP) Bifurcated reserve vs single “modified” CRVM • Similarities with AG36 – Both fair value, unless using IGRM – Both translate short-term crediting to long-term CFs FAS157 Basics • Views an IUL contract as a “hybrid” of – Host insurance contract (cash flows such as death benefits that occur without any index crediting) – Embedded Derivative (ED) contract sensitive to index movements • The ED is valued using fair value, including a possible adjustment for nonperformance risk • The Host contract is valued by imputing an interest rate to each premium contribution • Both values reflect only benefits paid for by premiums to date 7 11/28/2014 FAS157 Case Study • Policyholder pays single $100 premium – This is expected to keep the policy in force 1 year – At the end of the year, index returns 20% • The ED at issue is $4.84, the ED at the end of the year is $12.00 (i.e. at the 12% cap) – This $7.16 must be earned by the hedge assets • The Host at issue ($95.16) must support the return of $100 premium at the end of the year – This is an implied IR of 100/95.16 – 1 = 5.09% – This sets a minimum earned rate on General Account assets FAS157 Income Statement • Fixed Income Interest Margin – Interest Earned on General Account Assets, minus – Interest Credited on FAS157 Host Contract – Measures whether pricing is “supportable” • Equity Margin – Mark-to-Market P/L on Hedge Assets, minus – Increase in FAS157 Embedded Derivative – Measures performance of hedging program 8 11/28/2014 FAS157 Income Statement • No “excess” interest credited (i.e. crediting due to index) appears on income statement Projected Index Credit Issue Date Valuation Date Actual Index Credit Issue Date Projected Benefit Cash Flows Paid for by Projected Index Credit Valuation Date Projected Benefit Cash Flows Paid for by Actual Index Credit No change in ED due to simply passing the crediting date, although the equity risk is gone Benchmarking FAS157 Results • Change in AV (FAS97 Reserve) = Total Premiums – Deductions – Fund Release + Guaranteed Crediting + Index Crediting • Change in FAS157 Host = Host Premiums – Deductions – Host Release + Crediting at Host Imputed IR • Change in FAS157 Embedded Derivative ≈ Change in Future Crediting + Index Crediting – ED Release • The “historic” crediting component of ED is not equity sensitive and runs off over time 9 11/28/2014 FAS97 and FAS157 • Under FAS97, interest margin is a component of both gross profit and revenue – It therefore affects amortization of all intangibles • Interest margins are smaller and less volatile if a hedging program is in place and FAS157 accounting is used – Is it reasonable to assume expected interest margins of zero for the purposes of FAS97? – Hedge gains and losses are realized as variances in the current period Final Considerations • Requirements of “Fair Value” – Liabilities discounted using own credit spread for nonperformance risk – Calibrated to observable market securities where possible (exit prices, i.e. after bid/ask spread) – For floor/cap plans, need to include volatility skew • FAS157 accounting potentially allows for an alignment of the economic view and the earnings reality – Returning to the example from earlier, might be able to hedge on $75 notional without realizing the $95 credit as an expense in that period 10 11/28/2014 Final Considerations • Attribution is key – First, separate • pricing decisions (setting the cap or participation rate) • hedging decisions (buying or selling securities) • FAS157 provides a natural framework for this in the bifurcated reserve – For “Option Replication” hedges, quantify and monitor unhedged risks (gamma, vega, etc) • The AG36 “Hedged as Required” criteria can serve as a guideline here even if the company does not use IGRM 11 Influence of Computing and Models on Risk Management A Discussion on Least-Squares Monte Carlo Simulation Peter M. 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Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 2 1 Overview Discuss the use of least-squares Monte Carlo (LSMC) techniques for nested stochastic simulations – LSMC is a type of Proxy Modeling technique which includes such approaches as Curve fitting, Compression, etc – The Insurance Industry is facing increasing computational demands as result of increased product and scenario generation complexity, financial reporting requirements, capital standards and enterprise risk management activities What we are presenting today is different from previous work because of the following: – The application of LSMC to Greeks and VA hedging simulations – Multiple time horizons and stochastic rates – Comparison of LSMC results to brute-force simulated nested stochastic simulated Book level results Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 3 PathWise Simulation Workflow PathWise is an integrated solution from creating the model, launching the job and collecting the outputs PathWiseTM Analytics Studio P PathWiseTM Modeling Studio GPU Grid PathWise Middleware AWS Cloud Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 4 2 Contents Section 1 Brute-Force Monte Carlo (BFMC) Section 2 Least-Squares Monte Carlo (LSMC) Section 3 Conclusions Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 5 Section 1: Brute-Force Monte Carlo (BFMC) 3 Brute-Force Monte Carlo Simulation The Brute-Force Monte Carlo (BFMC) nested stochastic simulation is very intensive computationally. Legacy VA solution providers struggle with these problems. A typical BFMC nested stochastic simulation, for example, has 2000 outer loop paths and 41 quarterly steps. Risk Neutral Paths (1000) Real World Paths (2000) 0 1 2 …. 3 Time Steps (41) Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 7 One Sample Path 50+ state variables are projected including account value, guarantee values, fees and withdrawals Discount Step Factor Index 1 Index 5 Index 1 Return …. Index 5 Return Portfolio Value Portfolio Return Shadow Account Account Withdrawal Bond 1 Bond 2 Bond 3 .… 0 1.00 100.00 0.00 100.00 0.00 100.00 0.00 100.00 0.00 0.00 100.00 100.00 100.00 1 1.00 98.19 -0.02 100.56 0.01 100.56 0.01 98.21 -0.02 0.83 99.72 99.72 99.72 2 0.99 98.37 0.00 101.94 0.01 101.94 0.01 96.92 -0.01 0.83 99.44 99.44 99.44 3 0.99 88.51 -0.11 112.10 0.10 112.10 0.10 91.46 -0.06 0.83 99.16 99.16 99.16 4 0.99 75.94 -0.15 110.59 -0.01 110.59 -0.01 84.97 -0.07 0.83 98.91 98.91 98.91 107.09 -0.03 107.09 -0.03 85.31 0.00 0.83 98.67 98.67 98.67 …. 5 0.99 75.00 -0.01 …. 6 0.98 69.28 -0.08 106.14 -0.01 106.14 -0.01 78.38 -0.08 0.83 98.42 98.42 98.42 7 0.98 66.05 -0.05 105.84 0.00 105.84 0.00 75.15 -0.04 0.83 98.16 98.16 98.16 8 0.98 59.06 -0.11 96.67 -0.09 96.67 -0.09 71.39 -0.05 0.83 97.93 97.93 97.93 9 0.98 53.81 -0.09 95.02 -0.02 95.02 -0.02 70.50 -0.01 0.83 97.93 97.62 97.62 10 0.97 61.85 0.14 104.99 0.10 104.99 0.10 75.55 0.07 0.83 97.93 97.28 97.28 …. …. 37 0.83 144.73 0.08 234.80 0.08 128.69 0.08 1.08 76.77 0.83 97.93 93.54 82.84 38 0.82 142.25 -0.02 249.98 0.06 128.28 0.00 0.97 73.77 0.83 97.93 93.54 82.09 39 0.81 129.98 -0.09 …. 282.58 0.12 132.16 0.03 1.00 73.28 0.83 97.93 93.54 81.33 …. 40 0.81 122.11 -0.06 307.87 0.09 136.79 0.03 1.01 73.37 0.83 97.93 93.54 80.59 41 0.80 126.18 0.03 336.11 0.09 145.59 0.06 1.05 76.57 0.83 97.93 93.54 79.85 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 8 4 AWS' Global Infrastructure Translates Into Capacity for Us GovCloud US ITAR Region US West N. California Oregon US East South America EU N. Virginia Sao Paulo Ireland Asia Pacific Sydney Tokyo Singapore China China 10 Regions | 25 Availability Zones | 51 Edge Locations Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 9 AWS also Enables Cost Effective BFMC Simulations No Upfront Investment Replace capital expenditure with variable expense Low ongoing cost Customers leverage our economies of scale Easily Scale Up & Down No need to guess capacity requirements and over-provision Has everything you need at transparent cost Speed and agility Focus on business Global Reach Infrastructure in minutes not weeks Excellent Support Model Go global in minutes and reach a global audience Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 10 5 Amazon GPU VPC Scalability Results AWS g2 GPU* virtual private cloud proves linearly scalable for large scale VA simulations when using PathWise. AWS Scalability Total Paths (Million) 60 40 Total Paths/Second (Million) 20 0 0 50 100 150 200 250 300 # of Cores (Thousand) # of GPUs 5 10 50 100 150 200 # of Cores (Thousand) 7.68 15.36 76.8 153.6 230.4 307.2 Total Paths/Second (Million) 1.50 2.99 14.89 29.94 44.64 59.75 Throughputs/Second (Thousand) 299 299 298 299 298 299 *each GPU or g2.4xlarge instance in AWS has 1536 cores and 4 GB of video memory Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 11 Inner Loop Scenarios Risk-Neutral Paths at Each Pivot Point: Shocks (17) Least Squares Scenarios (20) Brute Force Scenarios (1000) For one policy: Brute Force Least Squares Fitted Time Steps 41 41 41 Outer Loop 2000 2000 2000 Inner Loop 1000 20 0* Shocks 17 17 17 Total Paths 1,394,000,000 27,880,000 82,000 * Fitted FMV and Greeks Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 12 6 Dynamic Hedge Model Simulation Settings Liability: – 10,000 policies – Account value: $2,989,517 – 5 underlying assets / weights: 40%, 10%, 33%, 7%, 10% – 30 year GMWB – Withdrawal Base: 100% – Withdrawal Frequency: quarterly Economic Scenarios: – Outer loop: Regime-Switch Lognormal with HW2 stochastic rates – Inner loop: Geometric Brownian Motion with HW2 stochastic rates Greeks Computed: – 5 Deltas – 3 Rhos – Two-sided, produced by a total of 17 shocks Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 13 No. of Simulated Paths and GPU Performance BFMC Simulation: – Inforce: 10,000 policies – Outer loop: 2000 paths – Outer steps: 40 quarters – Inner loop: 1000 paths – Shocks: 17 – Amazon GPUs:150 – Run Time:~300,000 seconds # policies 10000 # outer loop x 2000 GPU Throughput = # outer steps x 40 x 1000 ்௧௦ ௨௧ௗ ௧௦ ீ ௨ ∗ோ௨ ௧ (௦ௗ) Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 # shocks # inner loop x 17 = ≈ 300,000 13 Trillion Simulated Paths paths/GPU/second 14 7 BFMC Hedging Simulation Results Hedging works as expected Much smaller standard deviation Tail risk is dramatically reduced Naked (BFMC) Hedged (BFMC) Mean -1,676 -417 STDEV 213,836 30,572 7x CTE95 -577,532 -73,759 7.8x CTE99 -737,335 -104,389 7x Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 Improvement 15 Section 2: Least-Squares Monte Carlo (LSMC) 8 LSMC Motivation and Concepts The previous experiment could take weeks for most CPU-based legacy solutions to calculate--even with thousands of cores. LSMC method offers an analytical solution to model the liabilities and Greeks in terms of risks that drive the business Monte Carlo Step: numerically approximate the liability value by randomly sampling outer loop paths where a small number of scenarios (fitting points) are run to reduce run time. An expected liability value is calculated for each fitting point. Least-Squares: run a regression through these fitting points and their corresponding liability values to obtain a proxy function that approximates the true liabilities Use the proxy function to determine the liability value for each real world scenario Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 17 LSMC Method Arrive at a proxy function by performing regression on fitting points and their corresponding liability values Proxy Function An analytical formula for the liability as a function of risk drivers, e.g. ܻ = ܽ + ܽଵܴܦଵ + ܽଶܴܦଵଶ + ܽଷܴܦଶ + ܽସܴܦଶଶ + ⋯ + ܽହܴܦଵܴܦଶ + ܴܽܦଵଶܴܦଶ + ⋯ Fitted Proxy Function Calibration like problem Different formulations for FMV and Greeks A lot of time and effort may be required to find the appropriate specification Time 0 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 Time 1 18 9 LSMC – Experiment 1: European Put Option FMV at T=1 Study 5-year expired Put Option Price at the first year: Least Squares Monte Carlo Simulation Spot Value: $100 Strike Value: $100 Volatility: 20% Interest: 2% Simulation Setting: 500 1-year projection points 5 LSMC inner-loop paths Results: Only Three points out of 95% CI Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 19 LSMC – Experiment 1: European Put Option FMV at T=1 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 20 10 LSMC – Experiment 1: European Put Option FMV T=1 Least Squares Monte Carlo Simulation Bad news Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 21 LSMC – Experiment1: European Put Option FMV at T=4 5-year Put Option Value at the 4th year Least Squares Monte Carlo Simulation As the maturity approaches, FMV shape and convexity change. Under this case, the lower order polynomial regression cannot give good fitting results Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 22 11 LSMC – Experiment1: European Put Option at T=4 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 23 LSMC – Experiment1: European Put Option at T=4 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 24 12 LSMC – Experiment1: European Put Option at T=4 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 25 LSMC – Experiment1: European Put Option Delta at T=1 Put Option Delta at the first year Least Squares Monte Carlo Simulation The number of LSMC innerloop paths is 50 From the plot, the deep ITM and OTM deltas are less accurate Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 26 13 LSMC – Experiment1: European Put Option Delta at T=1 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 27 LSMC – Experiment1: European Put Option Delta at T=1 Least Squares Monte Carlo Simulation Bad fit at the extremes Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 28 14 LSMC – Experiment1: European Put Option Rho at T=1 5Y Put Option Rho at the first year Least Squares Monte Carlo Simulation LSMC inner-loops: 50 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 29 LSMC – Experiment1: European Put Option Rho at T=1 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 30 15 LSMC – Experiment1: European Put Option Rho at T=1 Least Squares Monte Carlo Simulation Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 31 LSMC – Experiment 2: A Single Policy Policy – Account value: $300 – Five underlying assets / weights: 40%, 10%, 33%, 7%, 10% – 30 year GMWB – Withdrawal Base: $300 – Withdrawal Frequency: quarterly – Fair dividend: 42bps Economic Scenarios: – Outer loop: Regime-Switch Lognormal with HW2 stochastic rates – Inner loop: Geometric Brownian Motion with HW2 stochastic rates Simulation: – Simulation Frequency: quarterly – Out loop: 2000 paths – LSMC Inner loop: 20 paths Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 32 16 LSMC – Experiment 2: A Single Policy 10 year outer loop scenarios are projected The proportions of the LSMC fitted values falling in the 95% confidence intervals are over 98.5% Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 33 LSMC – Experiment 2: A Single Policy The y-axis is the LSMC fitted FMV value. As the red points are around the blue diagonal line, the fitting results are good. The two green lines are the 95% confidence interval band. The three R-squared values between BFMC and LSMC fitted FMVs are over 99.9%. Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 34 17 LSMC – Experiment 2: Single Policy Delta The proportions of the LSMC Total Delta values falling in the 95% confidence intervals are between 28% and 60% Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 35 LSMC – Experiment 2: Single Policy Delta These three R-squared values between BFMC deltas and LSMC fitted deltas are 94.7%, 97.1%, and 97.9% respectively. Not as good as the fitting for FMV. Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 36 18 LSMC – Experiment 2: Single Policy Rho The proportions of the LSMC Total Rho values falling in the 95% confidence intervals are less than 4%. Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 37 LSMC – Experiment 2: Single Policy Rho Liability Rho Fitting Percentage in CI along time Three R-Squared values between BFMC Rho and LSMC Rho are 97.6%, 98.2%, and 98.8% respectively. Although R-Squared values look good, their slopes are far away from tg45⁰=1. All of them are close to tg60⁰≈ 1.732. The number of LSMC inner loop paths is not enough for LSMC Greeks fitting Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 38 19 LSMC – Experiment 3: Multiple Policies GMWB Book Information 10,000 generated 30-year GMWB policies Different policies have different total initial account value. The total initial account amount ranges from $100 to $500 Different policies have different allocations for sub-accounts To calculate FMVs and Greeks during the first decade Computation Complexity Four hundred training sets at each time step(total 40 steps; four steps per year) For each training set, there are 2000 x 20 projections at each time step (# outer loops x # LSMC inner loops) Totally, there are 400 x 40 x 2000 x 20 projections Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 39 BFMC vs LSMC (Naked) Least-squares proxy works very well for FMV fitting Nearly identical naked P&L distributions LSMC BFMC Mean -8,643 -1,676 STDEV 209,593 213,836 CTE95 -568,214 -577,532 CTE99 -733,644 -737,334 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 40 20 BFMC vs LSMC (Hedged) Least-squares proxy does not work very well for Greeks Least-squares hedging results are not as good as brute-force Larger standard deviation and longer tail risk LSMC produced some biased hedging statistics LSMC BFMC Mean -6,139 -417 STDEV 59,941 30,572 CTE95 -155,900 -73,759 CTE99 -225,089 -104,389 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 41 LSMC Hedging Simulation Results LSMC hedged performance is not as good as BFMC Less standard deviation deduction, decreases from BFMC’s 7x to 3.5x Less tail risk deduction, decreases from BFMC’s 7.8x to 3.6x Naked (LSMC) Hedged (LSMC) Mean -8,643 -6,139 STDEV 209,593 CTE95 -568,214 CTE99 -733,644 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 LSMC Improvement BFMC Improvement 59,941 3.5x 7x -155,900 3.6x 7.8x -225,089 3.3x 7x 42 21 Section 3: Findings and Conclusion Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 43 Our LSMC Findings Pros Cons Less inner loop calculations Fitting required at each time step and each Greeks Fast FMV and Greeks calculation once fitted Fitting process can be subjective Confidence intervals can be calculated Fitting does not work very well for Greeks Negative impact on hedge performance Assumption residuals are normally distributed Discontinuities for single policies cannot be properly modeled Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 44 22 Overall Findings For vanilla options, Least-Squares Monte Carlo works very well on both option price and Greeks approximations For variable annuities, Least-Squares Monte Carlo works very well for liability FMV estimation, but not so well for Greeks At a book level, the hedge performance using Least-Squares Monte Carlo fitted FMV and Greeks was not as effective as Brute-Force Monte Carlo method The fast growth of GPU and cloud technology provides a speedy and low-cost solution for VA – Nested Brute-Force Monte Carlo calculations – Testing and refining proxy approaches like LSCM to speed up nested stochastic calculations Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 45 Bibliography Longstaff, F and Schwartz, E. Valuing American options by Simulation: A Simple Least-Squares Approach Review of Financial Studies 14, pp537-548(2001) Cathcart, M and Morrison, S. Variable annuity economic capital: the least-squares Monte Carlo Approach Life & Pension 2011 Stentoft, L Convergence of the Least Square Monte Carlo Approach to American Option Valuation Management Science, Vol. 50, No. 9 (Sep., 2004) Horig, M. & Leitschkis, M Solvency II Proxy Modeling via Least Squares Monte Carlo Milliman Research Report, 2012 Carrol, S & Hursey, C Efficient Curve Fitting Techniques Life & Conference and Exhibition, 2011 Aon Benfield Securities, Inc. | Annuity Solutions Group Proprietary & Confidential | November 17, 2014 46 23 11/28/2014 State-of-the-art Hybrid Modeling for Fixed Indexed Annuities and Variable Annuities Russell Goyder Equity-Based Insurance Guarantees Conference Chicago, November 17th 2014 Session 3A: 1530 – 1700 hours © 2014 - FINCAD Outline 1. 2. 3. 4. 5. 6. 7. 8. Brief review of annuity modeling Hybrid modeling challenges Copula hybrid models Contract representation Analytic risk Valuation compiler Examples Conclusion Source code © 2014 - FINCAD Parser AST Semantic Analysis IR Code generati on Progra m Executio n 2 1 11/28/2014 Brief Review of Annuity Modeling © 2014 - FINCAD 3 The first annuities 1982 1959 1952 1912 First variable annuity is issued by TIAACREF. The Supreme Court holds that variable annuities are subject to federal securities regulation. The Tax Equity and Fiscal Responsibility Act of 1982 allows annuities to keep their valuable taxdeferred status. The Pennsylvania Company for 1759 Insurance on Lives and Granting Annuities offers annuities to the general public. First annuity in America offered by a Pennsylvania company to Presbyterian ministers and their families. Sources: IRI Insight Issue 5 Volume 4 and www.limra.com © 2014 - FINCAD 4 2 11/28/2014 The first complex guarantees 1999 1997 1996 Total annuity assets top $1 trillion. Variable annuity sales top $100 billion a year. GMIB introduced. 1995 Annuity industry sales top $100 billion for the year. 1984 1759 – 1982 The Tax Reform Act of 1984 eliminates the double taxation of realized capital gains of separate accounts. Sources: IRI Insight Issue 5 Volume 4 and www.limra.com © 2014 - FINCAD 5 Modern landscape 2012 2006 2005 2004 GMWB introduced. Indexed annuity sales top $25 billion for the year. The Pension Protection Act of 2006 overhauls the federal pension plan. Living benefits make up 84% of all North American sales 2002 GMAB introduced. 1984 – 1999 Sources: IRI Insight Issue 5 Volume 4 and www.limra.com © 2014 - FINCAD 6 3 11/28/2014 Accumulation phase Guaranteed benefits are functions of several possible end values Premium P (PR = Participation Rate) © 2014 - FINCAD 7 GMxB features Accumulation benefit: rollover options Death benefit Accumulation benefit Income Benefit: rollover options Income benefit © 2014 - FINCAD 8 4 11/28/2014 GMxB modeling literature 2000 2002 Milevsky + Posner Windcliff et al • • • • 2004 2006 2008 2010 2012 Milevsky + Salisbury van Haastrecht et al Boyle + Hardy Ballotta + Haberman • • • • • • 2014 Huang et al Marshall et al van Haastrecht et al • • Coleman et al Chen + Forsyth Dai et al Chen et al Bauer et al Ulm • • • Benhamou et al Blamont + Sagoo Kling et al 1990’s • • • Ravindran + Edelist (1996) Benhamou et al Blamont + Sagoo • • Feng + Volkmer Krayzler et al © 2014 - FINCAD 9 Model and contract breakdown • Sparse coverage of the modelcontract matrix • Very limited modeling of equity and rates smiles © 2014 - FINCAD Mortality Interest rates Fund value Basic Determ. Lognormal Basic Determ. Lognormal Basic Determ. Local vol DeMoivre Determ. Lognormal Stochastic 1f HJM Lognormal Basic Hull White Lognormal Basic Hull White Merton JD Basic Hull White Heston Basic Vasicek Lognormal Basic Hull White 2f Schoebel-Zhu CIR CIR Heston Stochastic CIR Lognormal 10 5 11/28/2014 Themes in the literature Actuarial Biometric emphasis Stochastic mortality Lognormal fund dynamics Deterministic interest rates Good coverage of contract features Monte Carlo / practical pricing methods Derivatives Financial emphasis Simple mortality Smile models for fund Interest rate models Focus on GMAB and GMIB Focus on (quasi) analytic solutions © 2014 - FINCAD 11 Literature summary • Many complex contract features • Contract coverage is patchy • Mortality risks treated independently • Hybrid models for equity-rates exposure • Each hybrid model is a research project • Smile models are pretty rare © 2014 - FINCAD 12 6 11/28/2014 Hybrid Modeling Challenges © 2014 - FINCAD 13 Why is hybrid modeling so hard? Stochastic rates destroy equity calibrations Careful analysis for consistent measure Simulation headaches Non-intuitive correlation © 2014 - FINCAD 14 7 11/28/2014 To illustrate: • Simple example – Yet sufficient to illustrate the above challenges – Lognormal equity, Hull White interest rates © 2014 - FINCAD 15 Equity-rates example: calibration Canonical Treatment Forward: is a martingale: where and © 2014 - FINCAD 16 8 11/28/2014 Equity-rates example: calibration Calibrate rates model parameters ܽ and ߪ()ݐ Price options via where For a given value of ߩ, solve for equity vol ߪௌ()ݐ © 2014 - FINCAD 17 Equity-rates example: valuation Bring into common measure, say ܶ-forward Given ݔ~Φ(0,1) and ݅௧ short rate ݎ, © 2014 - FINCAD 18 9 11/28/2014 Equity-rates example: valuation Short rate where and © 2014 - FINCAD 19 Equity-rates example: correlation • Calibrate correlation if have quotes • Rare, so often combination of intuition and historical analysis Exercise caution - given two functions Not when ߩ = 0, but when © 2014 - FINCAD 20 10 11/28/2014 Summary • Hybrid models: Require bespoke calibration techniques Need significant quantitative research Need bespoke software implementation Contain confusing correlation parameters Hybrid models are rare and low-fi © 2014 - FINCAD 21 Our goals Multi-factor marginals Configure (not code) arbitrary hybrid models Mortality Handle any number of underlyings Full coverage of “model – contract” matrix © 2014 - FINCAD Fund value (SLV) Copula Withdrawal Correlations that make sense Rates (LMM) Parallel computation and in-memory caching Analytic Risk 22 11 11/28/2014 Copula Hybrid Models © 2014 - FINCAD 23 Model the forward directly? © 2014 - FINCAD 24 12 11/28/2014 Model the forward directly? © 2014 - FINCAD 25 Decoupled equations • Reuse existing calibrations • Reuse existing marginal distribution generators • Intuitive correlation • ߩᇱ = 0 means independent observables • What about a consistent measure? © 2014 - FINCAD 26 13 11/28/2014 Problem Anchored to time ܶ. Recover spot price at ܶ: But for any other time t, introduce a drift ்߯ ()ݐ where • Drift correction tractable in this example • In general it is not © 2014 - FINCAD 27 Numeraire corrections Define factor ߰ ் ()ݐ: where . No arbitrage if where © 2014 - FINCAD 28 14 11/28/2014 Numeraire corrections Substitute for ܵ()ݐ: 1. 2. 3. 4. 5. 6. 7. 8. Denominator is “run hybrid simulation ignoring drift issue” Simple payoff converges very quickly Need one correction factor per stock observation Calculate as a preprocessing step Scale each path by ߰ ்()ݐ Payoff independent Model independent Combine with compiler techniques http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2311740 © 2014 - FINCAD 29 Multiple currencies: prices • Asset (foreign) currency ܣ, numeraire (domestic) currency ܤ • ܤworth of one ܣis ܺ()ݐ Lognormal: • Note use of ܺ( )ݐin correction for equity • For ݊ currencies, choose one as numeraire, apply above to rest © 2014 - FINCAD 30 15 11/28/2014 Multiple currencies: rates ݐ ݏ ݑ For rate from ݑ →ݐfixed at ݏin currency ܣ, numeraire ܲ (ݐ, ܶ) so © 2014 - FINCAD 31 Any model? • Credit (default intensity), Inflation, Multi-curve – By analogy with the above • Jumps – implicitly through pdf • Multi-factor models / discretized SDEs – Clarity on marginal vs copula • Large models (many marginals) – Dimensionality reduction for correlation • Correlation term structure – Relate term to incremental correlation © 2014 - FINCAD Process ݅serial correlation 32 16 11/28/2014 Copula hybrids summary • Model the forward, not spot, solves • Solve the remaining measure issue by imposing Numeraire Corrections directly • Goals checkup: © 2014 - FINCAD 33 Contract Representation © 2014 - FINCAD 34 17 11/28/2014 Flows Flow: obligation to deliver cash or physical asset Leg: multiple flows Swap: offsetting legs Condition: Delegate choice to rule based on observables Choice: Right to receive flows Or further rights Convenience: Null, Remainder, Reweight… http://www.fincad.com/derivatives-resources/white-papers/optimal-architecture.aspx © 2014 - FINCAD 35 Observables Flow anatomy: Pay or receive Observation time Accrual Notional Numeraire Observable Payment time Core language elements for ܺ()ݏ • +-/* • max, min • if( C, A, B ) for condition C and results A and B • and, or, <, <=, >, >= • bind to observation date (time) © 2014 - FINCAD 36 18 11/28/2014 Example observables Account value: )ݐ(ܣ Ratchet: max( ܣ) {௧} Rollup: 1 + ݎܣ Participation rate r Return ݕ = − 1 షభ Ratchet: ݐ ܩ = ݐ ܩିଵ (1 + max ݕݎ, 0 ) Accumulation benefit: max(ܣ, ܩ) © 2014 - FINCAD 37 Example contracts • GMAB: flow( USD, ݐ, max ݐ ܣ, ॴ ݐ ܩఛவ௧) • GMIB()ݐ: leg( ݐ, max ݐ ܣ, ݐ ܩmax ܴ ݐ , ݇ ॴఛவ௧) • GMIB with rollover option: – choice( GMIB ݐଵ , choice GMIB ݐଶ , … ) • GMDB: leg( ݏ, max ݐ ܣ , ݐ ܩ ॴ௧ష భழఛஸ௧, ) • GMWB: – Rational policyholder • ܥ = choice( flow ݐ , ݐ ܩݓ + scale GMIB ݐ , 1 − ݓ, GMIB ݐ ) • ܥିଵ = choice flow ݐିଵ, ݐ ܩݓିଵ – Policyholder behavior model + scale(ܥ , 1 − ݓ, ܥ ) • No choices, model the fraction of fund units remaining © 2014 - FINCAD 38 19 11/28/2014 Analytic Risk © 2014 - FINCAD 39 Fast, exact first-order exposures • Portfolio of 250 trades • 80% 10y Libor swaps • Remainder: – CDS – USD-EUR xccy swaps – Swaptions, options, • Desktop PC, core i7 CPU • Sensitive to >400 quotes: – OIS, Libor, basis and xccy swaps, USD and EUR vol cube, equity vols, survival, FX spot … • 600x speed-up • Typically 10-10,000x http://www.fincad.com/pdfs/F3 Universal Risk Technology.pdf © 2014 - FINCAD 40 20 11/28/2014 Valuation Compiler © 2014 - FINCAD 41 Compilation process Source code Parser AST Semantic Analysis IR Code generation Program Execution Rules int f(int x) { int result = (x / 42); return result; } clang –Weverything -pthread –fPIC code.cpp © 2014 - FINCAD 42 21 11/28/2014 Compilation process Source code Parser AST Semantic Analysis IR Code generation Program Execution Rules llvm ir output: .text ; ModuleID = 'test.c' .globl _Z1fi target datalayout = "e-p:64:64:64-i1:8:8-i8:8:8-i16:16:16-i32:32:32-i64:64:64-f32:32:32.align 16, 0x90 f64:64:64-v64:64:64-v128:128:128-a0:0:64-s0:64:64-f80:128:128-n8:16:32:64-S128" .type _Z1fi,@function target triple = "x86_64-unknown-freebsd10.0" _Z1fi: ; Function Attrs: nounwind .cfi_startproc define i32 @f(i32 %x) #0 { # BB#0: %1 = alloca i32, align 4 pushq %rbp %result = alloca i32, align 4 .Ltmp2: store i32 %x, i32* %1, align 4 .cfi_def_cfa_offset 16 %2 = load i32* %1, align 4 .Ltmp3: %3 = sdiv i32 %2, 42 .cfi_offset %rbp, -16 i32 %3, i32* %result, align 4 `-FunctionDecl 0x5aeab50 <test.cc:1:1, store line:4:1> f 'int (int)' movq %rsp, %rbp %4 = load i32* %result, align 4 |-ParmVarDecl 0x5aeaa90 <line:1:7, col:11> x 'int' .Ltmp4: ret i32 %4 `-CompoundStmt 0x5aead88 <col:14, line:4:1> .cfi_def_cfa_register %rbp } |-DeclStmt 0x5aead10 <line:2:3, col:24> movl $42, %eax "noattributes = { nounwind "less-precise-fpmad"="false" "no-frame-pointer-elim"="false" | `-VarDecl 0x5aeac10 <col:3, col:23> result#0 'int' movl %edi, -4(%rbp) frame-pointer-elim-non-leaf"="false" "no-infs-fp-math"="false" "no-nans-fp-math"="false" | `-ParenExpr 0x5aeacf0 <col:16, col:23> 'int' movl -4(%rbp), %edi "use-soft-float"="false" } | `-BinaryOperator 0x5aeacc8 "unsafe-fp-math"="false" <col:17, col:21> 'int' '/' movl %eax, -12(%rbp) | |-ImplicitCastExpr 0x5aeacb0 <col:17> 'int' <LValueToRValue> movl %edi, %eax | | `-DeclRefExpr 0x5aeac68 <col:17> 'int' lvalue ParmVar 0x5aeaa90 'x' 'int' cltd | `-IntegerLiteral 0x5aeac90 <col:21> 'int' 42 movl -12(%rbp), %edi `-ReturnStmt 0x5aead68 <line:3:3, col:10> idivl %edi `-ImplicitCastExpr 0x5aead50 <col:10> 'int' <LValueToRValue> movl %eax, -8(%rbp) `-DeclRefExpr 0x5aead28 <col:10> 'int' lvalue Var 0x5aeac10 'result' 'int' © 2014 - FINCAD 43 Valuation compiler Source code Parser AST Semantic Analysis IR Code generation Program Execution Rules flow( 1y3m, EUR, min( C, S(1y)*Libor3m ) ) Observable Process S Black Libor3m Hull White 1f <S, Libor3m> = -0.2 © 2014 - FINCAD 44 22 11/28/2014 Valuation compiler Source code Parser AST Semantic Analysis IR Code generation Program Execution Rules - min - constant - flow | C | 1y3m - multiply | EUR - multiply - min - simulate | C | S - multiply | 1.0 - observe - correction | S - simulate | 1y | Libor3m | Libor3m | 1.0 - numeraire Payoff operations Numeraire correction lognormal HW 1f Constants copula U(0,1) © 2014 - FINCAD 45 Valuation compiler Source code Parser AST Semantic Analysis IR Code generation Program Execution Rules Observable Process EUR Stock 1 Stoch Local Vol EUR Stock N CGMYe USD Stock 1 Stoch Local Vol USD Stock M Norm. inverse Gaussian EURUSD Stoch Local Vol USD Libor 3m Quad. Gaussian 3f Euribor 3m LMM Counterparty survival Hull White 1f © 2014 - FINCAD <EUR S1, EUR SN> = -0.5 <EUR SN, USD SM> = 0.75 <EUR S1, Libor3m> = -0.2 <USD Libor, Euribor> = 0.8 46 23 11/28/2014 Valuation compiler Source code Rules Parser Input 1. Contract details 2. Model • Marginals • Copula 3. Valuation methodology • Eg, Simulation • Number of paths 4. Desired outputs • Value, Risk • Histogram, cash flows © 2014 - FINCAD AST Semantic Analysis IR Code generation Program Execution Compiler 1. Parallel computation • Multi-threading • Multi-process 2. Numeraire Corrections 3. Analytic Risk 4. Cross-platform support 47 Examples © 2014 - FINCAD 48 24 11/28/2014 Example – GMAB paths • • • For a given contract, compare models path by path Ratchet guarantee with participation rate Four one-factor models, same Brownian sample for each – Lognormal as baseline – Single parameter local vol – Two jump-diffusions • No rates exposure © 2014 - FINCAD 49 Example – GMAB histogram © 2014 - FINCAD 50 25 11/28/2014 Example – rollover options • • • • • • Ratchet guarantee with 80% participation rate as before Notional is guarantee level at 10y, coupon is greater of 5y swap rate at 10y and a fixed strike Mortality assumption: ΓGompertz curve* 10 year accumulation phase with death guarantee Subsequently, 30 year annuity stream Option to start annuity each year from year 10 to 20 * http://paa2012.princeton.edu/papers/121013 © 2014 - FINCAD 51 Correlation © 2014 - FINCAD 52 26 11/28/2014 Convergence © 2014 - FINCAD 53 Conclusion Hybrid modeling is hard Numeraire corrections Copula hybrids Flows and observables Compiler ideas © 2014 - FINCAD Copula hybrid modeling Flexibility Model-contract combinatorics 54 27 11/28/2014 State-of-the-art Hybrid Modeling for Fixed Indexed Annuities and Variable Annuities Russell Goyder Equity-Based Insurance Guarantees Conference Chicago, November 17th 2014 © 2014 - FINCAD References Ravindran, K. & W. Edelist (1996). Deriving benefits from death in frontiers. In A. Konishi and R. E. Dattatreya (Eds.), Derivatives: State-of-the-Art Models, Valuation, Strategies and Products. New York: McGraw Hill. Milevsky, M.A. and S.E. Posner (2001), The Titanic Option: Valuation of Guaranteed Minimum Death Benefit in Variable Annuities and Mutual Funds, Journal of Risk and Insurance, Vol. 29(3), pg. 299-318. Windcliff, H., P.A. Forsyth, P.A. and K.R. Vetzal (2001). Valuation of Segregated Funds: Shout Options with Maturity Extensions, Insurance: Mathematics and Economics, Vol. 29(2), pg. 1-21. (UK, forshadowing result that insurance industry was mispricing complex options) (stock disappears somewhere?) Boyle, P.P. and M. Hardy (2003), Guaranteed Annuity Options, ASTIN Bulletin, Vol. 33(2), pg. 125-152. Ballotta, L. and Habaerman, S. (2003) Guaranteed annuity conversion options and their valuation. www.casact.org. Currie I.D., Durban, M. and Eilers, P.H.C. (2004) “Smoothing and forecasting mortality rates,” Statistical Modelling, 4: 279-298. Milevsky, M.A. and T.S. Salisbury (2006), Financial Valuation of Guaranteed Minimum Withdrawal Benefits, Insurance: Mathematics and E conomics, Vol. 38, pg. 21-38. Coleman, T.F., Y. Li and M.C. Patron (2006), Hedging Guarantees in Variable Annuities Under Both Equity and Interest Rate Risk, Insurance: Mathematics and Economics, Vol. 38(2), pg. 215-228. Chen, Z. and P.A. Forsyth (2008), A Numerical Scheme for the Impulse Control Formulation for Pricing Variable Annuities with a Guaranteed Minimum Withdrawal Benefit (GMWB), Numerische Mathematik, Vol. 109, pg. 535-569 Dai, M., Y.K. Kwok and J. Zong (2008), Guaranteed Minimum Withdrawal Benefit in Variable Annuities, Mathematical Finance, Vol 18(4), pg. 595-611. Bauer, D., A. Kling and J. Russ (2008). A universal pricing framework for guaranteed minimum benefits in variable annuities. Astin Bulletin, vol. 38(2):621– 651. Chen, Z., K. Vetzal and P. Forsyth (2008). The effect of modelling parameters on the value of GMWB guarantees. Insurance: Mathematics and Economi cs, vol. 43(1):165–173. © 2014 - FINCAD 56 28 11/28/2014 References Ulm, E.: Analytic solution for return of premium and rollup guaranteed minimum death benefit options under some simple mortal ity laws, ASTIN Bulletin, 38(2), 543-563. Benhamou, Eric and Gauthier, Pierre, Impact of Stochastic Interest Rates and Stochastic Volatility on Variable Annuities. Paris December 2009 Finance International Meeting AFFI - EUROFIDAI. D. Blamont and P. Sagoo. Pricing and hedging of variable annuities. Life & Pensions, pages 39-44, Feb 2009. Marshall, G., Hardy, M. and Saunders, D.: Valuation of a guaranteed minimum income benefit, North American Actuarial Journal, 14(1), 38-58. van Haastrecht, A., Plat, R. and Pelsser, A. A. J., (2010), Valuation of guaranteed annuity options using a stochastic volatility model for equity prices, Insurance: Mathematics and Economics, 47, issue 3, p. 266-277. van Haastrecht, Alexander and Lord, Roger and Pelsser, Antoon and Schrager, David, Pricing Long-Maturity Equity and FX Derivatives with Stochastic Interest Rates and Stochastic Volatility January 10, 2005). Insurance: Mathematics and Economics, Vol. 45, No. 3, 2009. Available at SSRN: http://ssrn.com/abstract=1125590 Ng, A.C. and J.S. Li (2011), Valuing Variable Annuity Guarantees with the Multivariate Esscher Transform, Insurance: Mathematics and Economics, Vol. 49(2), pg. 393-400. Bacinello, A.R., P. Millossovich, A. Olivieri and E. Pitacco (2011), Variable Annuities: A Unifying Valuation Approach, Insurance: Mathematics and Economics, Vol. 49(2), pg. 285-297. Kling, A., F. Ruez and J. Russ (2011), The impact of Stochastic Volatility on Pricing, Hedging, and Hedge Efficiency of Withdrawal Benefit Guarantees in Variable Annuities, Astin Bulletin, Vol. 41 (2), pg. 511-545 Feng, R. and H.W. Volkmer (2012), Analytical Calculation of Risk Measures for Variable Annuity Guaranteed Benefits, Insurance: Mathematics and Economics, Vol. 51(4), pg. 636-648. Krayzler, Mikhail and Zagst, Rudi and Brunner, Bernhard, Closed-Form Solutions for Guaranteed Minimum Accumulation Benefits (November 30, 2012). Available at SSRN: http://ssrn.com/abstract=2425801 Huang, H., Milevsky, M.A. and Salisbury, T.S. Optimal Initiation of a GLWB in a Variable Annuity: No Arbitrage Approach (arXiv:1304.1821v1 [q-fin.PM] 5 Apr 2013) © 2014 - FINCAD 57 29 Understanding and Managing Policyholder Behavior Risks Equity-Based Insurance Guarantees Conference Session 3B, 3:30-5:00pm, 17 November 2014 Ben Neff, FSA GGY AXIS Timothy Paris, FSA, MAAA Ruark Insurance Advisors, Inc. Overview of Recent Industry Experience 2 2 1 Actual / Expected VA Mortality Less rich More rich Death benefits Living benefits Aggregate 3 3 Withdrawal Frequency VA Partial Withdrawal Frequency <50 50-59 GLWB Non-Qual 60-64 65-69 Attained Age GLWB Qual No LB Non-Qual 4 70-79 80+ No LB Qual 4 2 Withdrawal Frequency VA Partial Withdrawal Frequency 1 2 3 4 Duration 5 6 7+ 5 5 Withdrawal Frequency VA Partial Withdrawal Frequency <50 50-59 60-64 65-69 70-79 Attained Age Commencement Non-Qual Commencement Qual Continuation Non-Qual 80+ Continuation Qual 6 6 3 Annual Withdrawal as % of Account Value VA Partial Withdrawal Amounts <50 50-59 60-64 65-69 70-79 Attained Age GLWB No Living Benefits 80+ 7 7 VA Partial Withdrawal Amounts Excess Less Than Full Full 8 8 4 VA Partial Withdrawal Amounts Younger Ages Less Than Full Excess Full 9 9 VA Partial Withdrawal Amounts Older Ages Excess Less Than Full Full 10 10 5 Surrender Rate VA Surrenders 7 or more 6 5 4 3 2 1 0 -1 -2 Years Remaining in Surrender Charge Period -3 or more 11 11 Surrender Rate VA Surrenders by Company 7 6 5 4 3 2 1 0 Years Remaining in Surrender Charge Period 12 -1 -2 -3 12 6 Surrender Rate VA Surrenders Years Remaining in Surrender Charge Period 2008 2009 2010 2011 2012 2013 13 13 Surrender Rate VA Surrenders 7 or more 6 5 4 3 2 1 0 -1 -2 Years Remaining in Surrender Charge Period GMIB GLWB GMWB 14 GMAB -3 or more None 14 7 Surrender Rate VA and FIA Surrenders 7 or more 6 5 4 3 2 1 0 Years Remaining in Surrender Charge Period VA GLWB VA No LB FIA GLWB -1 -2 -3 or more FIA No LB 15 15 VA Surrenders ITM 100+% ITM 50 - 100% Surrender Rate ITM 25 - 50% ITM 5 - 25% ATM OTM 5 - 25% OTM 25+% 7 or more 6 5 4 3 2 1 0 Years Remaining in Surrender Charge Period 16 -1 -2 -3 or more 16 8 Surrender Rate VA Surrenders – GMIB Shock Lapse 1Q 2Q 3Q 4Q 1Q 2Q 3Q 4Q 1Q 2Q 3Q 4Q 1Q 2Q 3Q 4Q 1Q 2Q 3Q 4Q 1Q 2Q 08 08 08 08 09 09 09 09 10 10 10 10 11 11 11 11 12 12 12 12 13 13 Calendar Quarter <25% ITM 25%-50% ITM 50%-100% ITM 17 17 Surrender Rate VA Surrenders and Partial Withdrawals Interaction 7 or more 6 5 4 3 2 1 0 -1 -2 Years Remaining in Surrender Charge Period No Prior WDs LT Full WDs Full WDs Excess WDs 18 -3 or more 18 9 Analysis and Risk Management 19 19 Surrenders 20 20 20 10 Assumptions PrinciplesBased Framework Experience 21 Behavior 21 Cohort Benchmark 22 22 11 23 23 24 24 12 25 25 Surrenders for living benefit guarantees Repeated adverse deviation “Cat” protection for assumption changes 26 26 13 VA Modeling Considerations & Case Study 27 27 Agenda VA modeling considerations Case Study • Product definition • Inforce and assumptions • Discussion of Results 28 28 14 Evolving Model Complexity Interest Markets Faster chips Economic Enviroment Grid Equity Markets Technology Innovation Cloud Stochastic Analysiss Governance Demographics and Policyholder Behavior AG43 Actuarial Models Reporting GAAP Regulation Risk Management SOX Reinsurance Product Innovation and Pricing C3P2 Compliance Hedging and ALM Solvency CCAR MAR 29 29 VA Modeling Requirements Economic Environment Product capture Policyholder behavior Risk Management • Hedging and ALM • Reinsurance US Stat and US GAAP financials • AG43, C3P2 • FAS 97, FAS 133, SOP 03-1 30 30 15 Economic Environment Starting Economic Scenario • Interest rate markets, equity markets (growth, div, vol), inflation, other variables Scenario Generation • Risk Neutral Hedging, FAS 133 • Real World AG43, C3P2 SOP 03-1 CCAR 31 31 Product Characteristics Policyholder investment options • Managed funds Equity, Bond, Dynamic • General account Guarantees • Benefit base – Roll-up, ratchet, reset, etc. • Benefit types – Death, income, accumulation, withdrawal 32 32 16 Policyholder Behavior Fund allocation Lapse Partial withdrawal Annuitization Needs to be dynamic Capture interaction between economic environment, product, policyholder 33 33 Risk Management ALM and hedging • Market risk focused • Projection of risk metrics – nested stochastic simulation • Execution of a hedging strategy Reinsurance • Insurance risk focused – mortality, lapse, etc. • Treaty level features can introduce modeling challenges – limits, thresholds, etc. Potential impact on reserve and capital 34 34 17 US Statutory Reserve and Capital AG430 C3P20 AG433 C3P23 Liabilities AG435 C3P25 Liabilities Liabilities Scenario set Block Reinvestment Strategies Scenario set Scenario set Block Block Assets Reinvestment Strategies Standard Scenario Reinvestment Strategies Assets Standard Scenario Standard Scenario Stoch Valuation Date Year 1 Assets Stoch Stoch Year 2 Year 3 Year 4 Year 5 35 35 US GAAP Calculations DAC0 DAC3 DAC5 Amort0 (EGP0;K0) Amort3 (EGP3;K3) Amort5 (EGP5;K5) SOP 03 – 1 SOP 03 – 1 SOP 03 – 1 FAS 133 FAS 133 FAS 133 FAS 97 FAS 97 FAS 97 Valuation Date Year 1 Year 2 Year Year 33 Year Year 44 Year Year55 History 36 36 18 Consolidated Projections Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube Results Cube 37 37 38 38 Case Study 19 Product VA with GLWB • 5% roll-up to age 85 • GLWB% varies with attained age Fees: • 1.4% M&E fees • 1.2% Rider fees 7 year surrender charge schedule Expense: • 1.2% Fund level expense 39 39 Inforce Seasoned block of VA with GMWB • • • • • Issue age 55 – 75 Average age 65 10B of AV 100k policies, average size 100k Guarantee base ~ 120% of AV 40 40 20 Assumptions Asset allocation – Fixed across major indices and cash Mortality – 85% of Ruark mortality table Partial withdrawal • Increasing frequency based on att. age • Amount is 90% of GLWB Dynamic lapse • Rate = Base Rates (A) * Dynamic Factor • Dynamic Factor = B ^ (ITM * C) 41 41 Discussion of Results 42 42 21 Reserve (Lapse, Guarantee Base) Point in time valuation Deterministic time 0 shocks of: • Fixed lapse assumption • Fund value 43 43 AG43 - Excess Reserve VS. Guarantee Base 3,000,000 Lapse = 7% Excess Reserve (Thousands) 2,500,000 Lapse = 5% Lapse = 3% 2,000,000 Lapse = 1% 1,500,000 1,000,000 500,000 0% 10% 20% 30% 40% 50% 60% 70% (Guarantee Base - AV) / AV 44 44 22 Lapse Random variable Approximate via a function • Rate = Base Rates (A) * Dynamic Factor • Dynamic Factor = B ^ (ITM * C) What values of A, B, C? • Calibration based on average historical data? • What if calibration is incomplete or incorrect? • What if we end up in a the tail of the distribution? 45 45 Lapse = A * B ^ (ITM * C) 25.00% A = 8%, B = .85, C = 10 A = 12%, B = .85, C = 35 20.00% A = 8%, B = .9, C = 10 A = 10%, B = .9, C = 35 15.00% Lapse A = 10%, B = .8, C = 20 A = 9%, B = .85, C = 20 10.00% 5.00% 0.00% -0.1 0 0.1 0.2 0.3 0.4 0.5 0.6 Moneyness 46 46 23 Lapse = A * B ^ (ITM * C) 10.00% 9.00% A = 8%, B = .85, C = 10 8.00% 7.00% Lapse 6.00% 5.00% 4.00% 3.00% 2.00% 1.00% 0.00% -0.1 0 0.1 0.2 0.3 0.4 0.5 0.6 Moneyness 47 47 AG43 - Total Reserve VS. Guarantee Base 3,000,000 Lapse = 7% Excess Reserve (Thousands) 2,500,000 Lapse = 5% Lapse = 3% Lapse = 1% 2,000,000 Lapse = Dynamic 1,500,000 1,000,000 500,000 0% 10% 20% 30% 40% 50% 60% 70% (Guarantee Base - AV) / AV 48 48 24 Financial Projection 12 quarter projection • Recalculate Statutory reserves each quarter Economic Scenario • Shock equity markets down 20% over 6 moths Lapse – Outer vs. Inner Loop Assumption • Base Assumption (A = 8, B = .85, C=10) • Shock Assumption (A = 9, B=.85, C=10) 49 49 Lapse = A * B ^ (ITM * C) 10.00% A = 8%, B = .85, C = 10 9.00% A = 9%, B = .85, C = 20 8.00% 7.00% Lapse 6.00% 5.00% 4.00% 3.00% 2.00% 1.00% 0.00% -0.1 0 0.1 0.2 0.3 0.4 0.5 0.6 Moneyness 50 50 25 Projection Results Case 1 – Baseline Case 2 – Outer loop lapse sensitivity Case 3 – Inner loop lapse sensitivity • AG43 lapse assumption change in Q4 2014 Metrics: • Projected lapse along outer loop • Projected excess reserve 51 51 Case 1 - Baseline YE 2012 Q1 2013 Q2 2013 Q3 2013 Q4 2013 Q1 2014 Q2 2014 Q3 2014 Q4 2014 Fund 10,005 9,168 8,458 8,301 8,155 8,012 7,874 7,742 7,615 Millions Guarantee Base 12,342 12,331 12,297 12,280 12,267 12,253 12,243 12,237 12,235 Outer Loop 5.5% 4.6% 3.8% 3.7% 3.5% 3.4% 3.2% 3.1% Lapse Excess Reserve Change in Excess Reserve 259 408 607 637 666 677 705 733 761 149 199 30 29 10 28 28 28 52 52 26 Case 2 – Outer Loop Sensitivity* YE 2012 Q1 2013 Q2 2013 Q3 2013 Q4 2013 Q1 2014 Q2 2014 Q3 2014 Q4 2014 Fund 10,005 9,193 8,516 8,395 8,285 8,176 8,071 7,971 7,874 Millions Guarantee Base 12,342 12,364 12,383 12,420 12,462 12,503 12,549 12,598 12,652 Outer Loop Lapse 3.7% 2.6% 1.8% 1.7% 1.6% 1.4% 1.3% 1.2% Excess Reserve Change in Excess Reserve 259 Change VS Baseline 409 611 644 677 691 723 754 787 150 202 33 33 14 32 32 32 1 3 3 3 3 4 4 4 *Outer loop lapses based on shock assumption 53 53 Case 3 – Inner Loop Sensitivity* YE 2012 Q1 2013 Q2 2013 Q3 2013 Q4 2013 Q1 2014 Q2 2014 Q3 2014 Q4 2014 Fund 10,005 9,193 8,516 8,395 8,285 8,176 8,071 7,971 7,874 Millions Guarantee Base 12,342 12,364 12,383 12,420 12,462 12,503 12,549 12,598 12,652 Outer Loop Lapse 3.7% 2.6% 1.8% 1.7% 1.6% 1.4% 1.3% 1.2% Excess Reserve Change in Excess Reserve Change VS Case 1 259 409 611 644 677 691 723 754 913 150 202 33 33 14 32 32 159 - - - - - - - 127 *Inner loop lapse assumption updated to shocked assumption in Q4 2014 54 54 27 Thank You! Ben Neff, FSA GGY AXIS [email protected] 416.250.2568 Timothy Paris, FSA, MAAA Ruark Insurance Advisors, Inc. [email protected] 860.866.7786 55 55 28 10th Annual Equity Based Insurance Guarantee Conference (Chicago) 0830 – 1000 hours, 18 November 2014 Questions for Panel 1) General a. Can you please give a summary of your background and the background of your company (as it relates to the business it writes)? b. How many people support the CRO function? c. How long has the position being in existence in your company and how long have you been in it? d. What has been the biggest one-off challenge for you in the capacity of a CRO that you have faced thus far (does not have to be VA/FIA related)? 2) Products and Risks a. What types of VA/FIA products does your company write? E.g GMWB/GMIB/FIA annual crediting cap strategy that can be annuitized as a WB etc. b. What is the contribution of the VA/FIA related business to your rest of the book of business in terms of size and the risks it introduces the firm to? c. What kind of distribution channel does your company use for the products in 2a. d. What keeps you up at night in regards to the risks the company takes on in selling the products identified in 2a? e. What are the top 3 ongoing challenges in dealing with these products – in the order of magnitude? f. How different are the rating agencies/regulators etc. opinion of your answers in 2e)? g. How has the withdrawal of certain players in the market affected the way you conduct your business? h. Do you work with senior management and the board to identify black-swan events? What do they tend to be and how often are these identified events updated/reviewed to take into consideration current environment? 3) Takeaways a. What is it that you know now which you wish you knew when you started your job as a CRO? b. If you could start all over again, what would you do different? c. What would be one key take away you would like participants of the conference to leave with from this panel discussion? 11/28/2014 Research Anshul Pradhan +1 212 412 3681 [email protected] US Rates Outlook 10th Annual Equity Based Insurance Guarantees Conference (Chicago) 18 November 2014: 1030 – 1115 hours PLEASE SEE ANALYST CERTIFICATIONS AND IMPORTANT DISCLOSURES BEGINNING ON PAGE 31 Macro environment in 2014 • Consensus view that yields will rise following the taper has been proven wrong. • Relentless flattening of the yield curve, as the long end has been well supported data but the start of the hiking cycle has been pegged • Volatility has declined across asset classes globally; e.g. US 3m10y at 70abpv (pre-crisis low : 57apbv). Both FX and Equity vol are also close to historical This lows economic backdrop has kept the front end pegged, Mixed data amid steady message from the Fed, has kept but longer dated yields have rallied relentlessly volatility low across asset classes 7.0 3.5 6.0 3.0 250 80% 70% 200 60% 2.5 5.0 2.0 50% 150 4.0 1.5 40% 3.0 100 1.0 2.0 30% 0.5 1.0 20% 50 0.0 0.0 Dec-04 Dec-06 Dec-08 5Y5Y swap yields, % Dec-10 Dec-12 10% -0.5 Dec-14 0 Jul-04 5s30s Treasury Curve, %, rhs Jul-06 Jul-08 USD 10y, lhs Jul-10 S&P, rhs Jul-12 0% Jul-14 FX, rhs Source: Bloomberg, Barclays Research 2 1 11/28/2014 Why have long dated yields declined this year? 3 Decomposition of long dated yields into expectations and term premium Driven by a decline in expectations of real neutral rate and term premium 2.5% 2.0% 5y5y swap yields have declined significantly since the beginning of the year 1.5% 2.1% 1.8% 1.3% 1.0% 6.0 0.6% 0.5% 5.5 5.0 0.0% 4.5 -0.5% 4.0 3.5 Expecte Real Policy Expected Inflation Rate Dec-13 Nov-14 0.0% Term Premium 0.0% 3.0 -0.1% 2.5 2.0 Dec-09 2.3% -0.2% Dec-10 Dec-11 Dec-12 Dec-13 Dec-14 -0.2% -0.3% -0.4% 5y5y swap rates, % -0.5% -0.5% -0.6% -0.6% -0.7% Expecte Real Policy Expected Inflation Rate Source: Federal Reserve, Barclays Research Term Premium 4 2 11/28/2014 Growth forecasts have again turned out to be too optimistic Growth forecasts have been pared back in the US Not just in the US but globally as well World GDP Forecasts US GDP Forecasts 3.5 3.3 3.1 2.9 2.7 2.5 2.3 2.1 1.9 1.7 1.5 4.0 3.5 3.0 2.5 2.0 1.5 1.0 0.5 0.0 10 11 11 12 12 13 13 14 14 15 10 16 11 11 12 12 13 13 14 14 15 16 Source: Bloomberg, Barclays Research 5 Underlying GDP growth hasn’t shown any signs of acceleration Underlying GDP in the 2-2.5% range Q3 15 print was not as strong as suggested by the headline number Contribution to real GDP Personal Consumption Non-Residential FI Residential FI Government-Defense 3.0 2.5 2.0 1.5 1.0 0.5 0.0 Sep-09 Sep-10 Sep-11 Sep-12 Sep-13 Sep-14 Q3-14 1.2 0.7 0.1 0.7 Q2-14 1.8 1.2 0.3 0.0 Q1-14 0.8 0.2 -0.2 -0.2 2013 1.9 0.6 0.2 -0.3 2012 1.3 0.4 0.4 -0.3 2011 1.0 1.0 0.1 -0.2 Government-Other Net Exports Change in inventories 0.2 1.3 -0.6 0.3 -0.3 1.4 0.0 -1.7 -1.2 -0.1 0.3 0.5 -0.1 0.3 -0.5 -0.4 0.0 0.2 Total Final sales Domestic Final sales Domestic Pvt. Final Sales 3.5 4.1 2.8 2.0 4.6 3.2 3.5 3.2 -2.1 -1.0 0.7 0.9 3.1 2.6 2.3 2.7 1.6 2.1 1.8 2.2 1.7 1.5 1.5 2.2 Domestic Private Final Sales, 4Q MA Source: CBO, Haver Analytics, Barclays research. 6 3 11/28/2014 Central banks globally are missing their inflation targets Long term inflation expectations in DM have been falling over the past year Inflation is expected to remain below CB targets Inflation (%) Current vs 1 yr ago and next year Inflation expectation 3.5 % 3.5 3.0 3.0 UK BE (RPI):2.73 2.5 2.5 2.0 1.5 2.0 1.0 1.5 USBE 1.92 France BE: 1.18 0.5 Germany BE: 1.13 1.0 10 0.0 EU US Japan UK Canada Switzerland Sweden Denmark -0.5 Sep-13 Sep-14 Q3-15* New Zealand 11 12 13 14 Australia UK BE 10y Eur BE 10y France BE 10y USBE 10y Inflation Target Q2-15* is yoy quarterly average inflation forecasts (Core PCE for the US, CPI for all other countries) Realized inflation forecasts are yoy core PCE for the US, core CPI for EU,UK and CPI for others Source: Bloomberg, Barclays Research 7 Global term premia has compressed to unprecedented lows Long dated yields have declined globally Term Premium has compressed to historical lows % 2.0 1.5 1.0 0.5 0.0 -0.5 -1.0 Jan-99 Jan-01 Jan-03 Jan-05 Recession Jan-07 Jan-09 Jan-11 Term Premium Jan-13 Source: Bloomberg, Barclays Research 8 4 11/28/2014 Rate volatility has declined to historical lows Global rate vol close to pre recession lows Dispersion of economic forecasts has declined 3.5 3.0 5 2.5 4 3 2.0 2 1.5 1 1.0 0 0.5 -1 0.0 Dec-66 -2 -3 -4 Nov-02 Dec-74 Dec-82 Dec-90 Dec-98 Dec-06 Dec-14 250D Realized Vol, 10y Tsy, % Nov-04 Nov-06 Nov-08 Nov-10 Nov-12 Nov-14 1y10y swaption vol, % PC1 of US, UK, Eur rate vol Dispersion of real GDP growth forecasts (75/ 25%ile), 4Q MA Source: Barclays Research 9 Negative correlation with equities has increased the perceived diversification benefit in owning Treasuries Stock-bond Return correlation has recently been negative Correlation in close to the historical lows 1.00 0.6 Daily Tsy Index Price Return, % 2014 0.4 0.75 0.50 0.25 0.2 0.00 0.0 -3.0 -2.0 -1.0 0.0 1.0 2.0 3.0 -0.25 -0.2 -0.50 -0.4 -0.75 -0.6 -1.00 Sep-94 Daily S&P Price Return, % Sep-98 Sep-02 Sep-06 Sep-10 Sep-14 Stock-Bond Correlation, % Source: Barclays Research 10 5 11/28/2014 Key Takeaways Long dated yields have declined sharply, not just in the US but globally Neutral rate expectations have declined along with growth forecasts Inflation continues to remain stubbornly below Central Bank Targets Term Premia has compressed to unprecedented lows Volatility is close to historical lows given low dispersion in growth forecasts Negative correlation with equities has increased the diversification benefit 11 What is the outlook for monetary policy? 12 6 11/28/2014 Monetary policy has been extremely accommodative by historical standards Fed’s Balance Sheet has expanded significantly Fed funds rate has been stuck at the ZLB since 2008 10.0 5,000 8.0 30% Current 9.0 25% 4,000 7.0 20% 3,000 6.0 15% 5.0 2,000 4.0 10% 3.0 1,000 2.0 1.0 5% 0 0.0 Dec-89 Dec-94 Dec-99 Dec-04 Dec-09 0% 04 Dec-14 06 Fed Funds Forecast, % 08 10 12 14 16 18 20 Tsys held in SOMA, $bn MBS+Agency Debt, $bn Total Securities in SOMA, % of GDP, RHS Source: Federal Reserve, Barclays Research 13 Labor market slack has declined significantly Labor market slack is steadily falling. Broader measures of unemployment may fall to 2004 levels by late-2015 6 5 4 3 2 1 0 Broad Slack Measure to decline 0.5% by Q3-15 -1 -2 -3 Jun-92 Jun-94 Jun-96 Jun-98 Jun-00 Unemp - NAIRU Jun-02 Jun-04 Jun-06 Jun-08 Labor Market Indicators (first factor) Latest Average Q2-2004 Distance Pace of Decline, 1yr Time to H104 Levels, yrs Date when hit U3 5.8 5.6 0.2 -1.4 0.1 Dec-14 Unemp (>27wks) 1.9 1.2 0.6 -0.8 0.8 Sep-15 Jun-10 Jun-12 Jun-14 Jun-16 Q2-04 Levels U6 11.5 9.6 1.9 -2.2 0.9 Sep-15 Source: Federal Reserve, Barclays Research 14 7 11/28/2014 Broad range of labor market indicators have shown improvement Nonfarm employees Temporary help services employment 1.2 1.0 0.8 0.6 0.4 0.2 0.0 -0.2 Initial Claims Unemployment Rate, >27 weeks Job Openings Hirings Quits Underemp. (U6-U3) NFIB Hiring Plans Unemployment Rate Labor market differential Difficult to fill (NFIB) Latest 1y ago Q104 Q4 06 Q4 09 Source: Haver Analytics, Atlanta Fed, Barclays research. 15 Discouragement has only marginally contributed to the decline in the overall labor force participation rate Decline in LFPR over last few years, not due to discouragement Only a small fraction of the decline in LFPR over the last decade attributable to those who want a job Cumulative Decline in LFPR since End of 2000 1.0 0.5 0.0 -0.5 -1.0 -1.5 -2.0 Dec-00 Dec-02 Dec-04 Dec-06 Dec-08 Dec-10 Dec-12 Retirement Disability Want a Job Don't Want - In School Don't Want - Not in School Decline in LFPR, % population, Q407 to Q413 Total Want a Job Retired Disabled or Ill In School Others 16-24y -0.6% -0.1% 0.0% -0.1% -0.5% 0.1% Wants a Job/Total 11% 25-50y -0.3% -0.2% -0.1% 0.0% -0.2% 0.1% 53% 51-60y -0.4% -0.1% 0.1% -0.4% 0.0% 0.0% 22% 61y+ -1.9% -0.1% -1.4% -0.3% 0.0% 0.0% 6% Total -3.2% -0.5% -1.4% -0.9% -0.7% 0.2% 14% Source: Haver Analytics, Philadelphia Fed, Atlanta Fed, Barclays Research 16 8 11/28/2014 “Maximum Employment” Mandate: Wage inflation is key Wage inflation should accelerate going forward All measures of wage inflation have risen from the lows Source: Haver Analytics, Barclays research 17 Inflation has risen from the lows but remains below target 5% 4% 3% Core inflation has stagnated at current levels 2% 1% 5% 0% 4% -1% 3% -2% -3% 2% -4% Jan-01 Jan-03 Jan-05 Jan-07 Jan-09 Jan-11 Jan-13 1% Core Services 0% Core Goods 8 -1% 7 -2% Jan-01 Jan-03 Jan-05 Jan-07 Jan-09 Jan-11 Jan-13 6 Headline PCE PCEexcluding Food and Energy 5 4 3 Source: Haver Analytics, Barclays research 2 1 0 Mar-83 Mar-89 Mar-95 Core PCEServices Mar-01 ECI Mar-07 Mar-13 AHE 18 9 11/28/2014 Goods inflation to become more of a drag in the near term Trade weighted USD has strengthened from the lows Housing inflation has risen from the lows and should accelerate further 5% 140 12.0 130 4% 11.0 120 10.0 110 3% 2% 100 9.0 1% 90 8.0 0% -1% Mar-01 80 May-94 May-99 May-04 May-09 May-14 7.0 Mar-04 Mar-07 Housing Inflation, %, lhs Mar-10 Nominal Broad Trade-Weighted Exchange Value of the US$ (Jan 97=100) Mar-13 Rental Vacancy Rates, %, rhs Pickup in core Goods inflation to be reversed Non-housing service inflation lower than pre-crisis levels Recent drop in healthcare due to Sequester 20% 5.0% 10% 15% 5% 10% 4.0% 5% 0% 3.0% 0% Medicare Sequester 2.0% -5% -5% -10% 1.0% -15% Dec-05 Dec-07 Dec-09 Dec-11 yoy change in Trade Weighted USD 0.0% -1.0% Jan-01 Jan-03 Jan-05 Jan-07 Jan-09 Jan-11 Jan-13 Core Services ex-housing ex- heathcare -10% Dec-13 yoy change in Core Import Prices, 3M Lagged, rhs Source: Haver Analytics, Barclays research Health Care 19 Weak recovery suggests neutral rate is much lower today According to an estimate, short run real neutral rate has declined to around 0% Well below pre-crisis levels due to slower trend growth and headwinds 4.0 4.0 3.5 3.0 3.0 2.0 2.5 1.0 2.0 1.5 0.0 1.0 -1.0 0.5 -2.0 0.0 -3.0 -0.5 -1.0 Jun-92 Jun-95 Jun-98 Jun-01 Jun-04 Jun-07 Jun-10 -4.0 Jun-92 Jun-13 Estimate of short run real neutral rate Jun-95 Jun-98 Jun-01 Jun-04 Trend Growth Jun-07 Jun-10 Jun-13 Headwinds “The Taylor Rule assumes an equilibrium real rate of interest of 2 percent. This seems much too high in the current economic environment in which headwinds persist, and somewhat too high even when these headwinds fully dissipate “ – NY Fed Dudley - June’14 Source: Federal Reserve, Barclays Research 20 10 11/28/2014 Fed’s estimate of long term neutral rate may be too high Fed’s long term fed funds forecast has declined Trend growth may be lower than the Fed is assuming 4.30 4.5 4.20 4.0 4.10 3.5 3.9 3.2 3.1 3.2 3.0 4.00 2.3 2.5 3.90 2.0 3.80 2.0 1.5 1.5 3.70 1.0 3.60 0.5 3.50 Dec-11 0.5 0.0 Jun-12 Dec-12 Jun-13 Dec-13 Jun-14 1950-1973 1974-1981 1982-1990 1991-2001 2002-2011 2012-2022 Potential Output Fed's mean estimate of longer run nominal funds rate Potential Labor Force Potential Labor Productivity Median Source: Federal Reserve, Barclays Research 21 Key Takeaways Monetary policy has been extremely accommodative post-crisis Labor market slack has fallen significantly from post-crisis highs Wage inflation has risen from the lows but remains muted Inflation has risen from the lows, but downside risks have emerged Neutral Rates are significantly lower than pre-crisis averages Patience in unwinding monetary policy accommodation is warranted. A pickup in Inflation could cause the Fed to tighten at a faster pace 22 11 11/28/2014 What does it mean for the markets? 23 Yields are lower than can be justified by the economic outlook Benign hiking cycle given the econ outlook Market is trading well through even this benign cycle 4.0 3.5 3.0 -10 2.5 -17 2.0 -25 -30 1.5 -32 -38 1.0 -44 -50 0.5 2s 0.0 Dec-14 3s 5s 7s -42 10s 30s Term Premium, bp Dec-16 Dec-18 Base Case Dec-20 Dec-22 Market OIS Rates, % Dec-24 Source: Barclays Research 24 12 11/28/2014 Low term premium leads to low/negative excess returns Low term premium is associated with subsequent low excess returns Term premium is negative in the intermediate sector 3.0 14 2.5 12 2.0 10 8 1.5 6 1.0 4 2 0.5 0 0.0 -2 -4 -0.5 -6 -1.0 Jun-03 Tsy Index Excess Returns, Subsequent 1 year -8 -1.00 Jun-04 Jun-05 Jun-06 Jun-07 Jun-08 5y term premium, % Jun-09 Jun-10 Jun-11 Jun-12 Jun-13 R² = 0.42 -0.50 0.00 0.50 1.00 1.50 2.00 2.50 3.00 Jun-14 10y term premium, % 10y term premium, % Source: Federal Reserve, Barclays Research 25 Net Supply of Treasuries has been steadily falling Net Coupon Foreign Issuance Sector Federal Reserve Pension Funds /Ins Mutual funds Banking Sector Others 2010 1,602 781 245 82 131 117 246 2011 1,319 418 642 80 85 -40 134 2012 1,036 576 21 82 110 56 191 2013 799 407 543 49 55 -27 -229 2014E 603 341 252 44 57 128 -220 2015E 463 300 0 40 50 100 -27 Source: Haver Analytics, Barclays Research 26 13 11/28/2014 Demand from foreign investors remains high Foreign Investors have been buying further out the curve at Treasury auctions FX Reserve balances stand at $12trillion. Even modest growth will result in significant demand for US FI 4.5 10% 40% Sep-12 Sep-13 Level of FX Reserves, $bn, lhs Currency adjusted, 12M growth of key countries, %, rhs 2013 2014 YTD Sep-11 3.0 -5% Sep-14 2012 7,000 Sep-10 3.5 0% 2005 0% 4.0 20% 2011 5% 8,000 5.0 60% 10,000 9,000 5.5 2010 11,000 80% 2009 15% 6.0 2008 12,000 100% 2007 20% 2006 $bn 13,000 % of purchase in 2y/ 3y/ 5y % of purchase in 7y/ 10y % of purchase in 30y Duration Est (yrs), RHS Source: Treasury, Bloomberg, Barclays Research 27 Real yields in the US are high in a global context ! 10y real yields in the US are low in a historical context but high relative to Europe and Japan 2.0 1.5 1.0 0.5 0.0 -0.5 -1.0 -1.5 Jun-10 Dec-10 Jun-11 Dec-11 Jun-12 Dec-12 10y real rates, USD Jun-13 EUR Dec-13 Jun-14 JPY Source: Barclays Research 28 14 11/28/2014 Domestic bank demand has accelerated given new regulation Mutual fund demand has picked up but not to the levels prior to the last year selloff Bank demand for securities has picked up 400 400 300 300 200 200 100 100 0 -100 0 -200 -100 -300 -400 Mar-12 Jun-12 -200 Jan-04 Jan-06 Jan-08 Jan-10 Jan-12 Jan-14 Sep-12 Dec-12 Mar-13 Jun-13 Sep-13 Dec-13 Mar-14 Jun-14 Taxable Bond funds, $bn, 13 weeks, annualized Net increase in security holdings, 6m annualized Equity Inflows,$bn, 13 weeks, annualized Source: Haver Analytics, Barclays Research 29 What could be the big surprise next year? Higher Inflation Pickup in inflation could trigger faster normalization Market’s are very sanguine about the inflation outlook 3.5 6 % 5 4 3 3.0 UKBE(RPI):2.73 2 1 2.5 0 2.0 -1 USBE 1.92 -2 -3 1.5 -4 France BE: 1.18 10 11 UKBE10y 12 Eur BE 10y 13 14 France BE 10y -5 Mar-87 Germany BE: 1.13 1.0 Mar-91 Real FF Rates, % Mar-95 Mar-99 Mar-03 Real Neutral Rate Mar-07 Mar-11 Deviation from Neutral, % USBE 10y Source: Treasury, Bloomberg, Barclays Research 30 15 11/28/2014 Key Takeaways: Inflation is key for higher yields Yields in the US look too low even given the moderate economic outlook Term Premium is unusually low Negative Term Premium is associated with low/negative subsequent returns Global Supply-Demand Factors argue for term premia to unwind gradually A pickup in Wage/Price Inflation is key for yields to rise Higher inflation should accelerate the process of policy normalization Higher inflation should also lead to higher term premia 31 Disclaimer This publication has been prepared by Barclays Capital, the investment banking division of Barclays Bank PLC, and/or one or m ore of its affiliates as provided below. 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All rights reserved. 6 3 28/11/2014 Executive Summary Recent Developments Opportunity set is substantial and leveraged to several factors: Continued growth in demand for retirement products Reduced competition from variable annuities Greater breadth of choices for the consumer Banks and broker/dealers are increasingly important distribution channels Broader availability of living benefits has expanded the addressable market Index selection strategy is a critical success factor for carriers 7 Overview of FIA Market Fixed Indexed Annuities Annual Sales Annual Sales (billions) $50 $44.86 $40 $36.37 $30 $27.43 $24.99 $29.15 $29.77 2010 2011 $32.01 $20 $10 $0 2008 2009 Source: Advantage Compendium & Beacon Research as of Nov 2014 2012 Distribution Trends Q2 2013 0% 3% 0% 0% 4% Captive Agents Captive Agents 14% Independent Producers Independent Producers Wirehouse Wirehouse 15% Large/Regional BDs Independent BDs 80% Bank & SLs Direct/Third Party Source: Beacon Research, as of Nov 2014 2014 Estimated Q2 2014 0% 5% 12% 2013 Past performance not indicative of future results 1% 1% Large/Regional BDs Independent BDs 65% Bank & SLs Direct/Third Party Past performance not indicative of future results 8 4 28/11/2014 Characteristics of Bank/Broker Dealer Distribution Key attractions Scalability More developed suitability standards Access to larger and well organized sales forces Distribution cost efficiencies Considerations Strong competition for shelf space Lengthy approval processes FIA sales are growing within banks they are currently a small proportion of overall sales Product restrictions and requirements Product features Minimum Carrier Ratings 9 Market Leaders 2014 Q2 FIA Sales – Top 10 FIA Underwriters Allianz Security Benefit Largest sellers of FIA have embraced bespoke indices American Equity Great American Athene USA Midland National Voya EquiTrust Life Symetra Financial F & G Life $M Source: Beacon Research, as of Nov 2014 $1000 M $2000 M $3000 M $4000 M $5000 M $6000 M $7000 M Past performance not indicative of future results 10 5 28/11/2014 FIA Growth Profile is Strong Relative to VA VA Sales Growth vs. FIA Sales Growth $180 $45 $160 $40 $150 $140 $35 $130 $120 $30 $110 $100 $25 New FIA Sales ($ Billion) New VA Sales ($ Billion) $170 $90 $80 VA Sales FIA Sales 2007 2008 2009 2010 2011 2012 2013 $179 $23 $152 $25 $124 $27 $137 $29 $154 $30 $143 $32 $141 $36 Source: Beacon Research, as of Nov 2014 2014 (Estimated) $136 $45 $20 Past performance not indicative of future results 11 Living Benefit Adoption Rates are High Proportion of Policyholders Selecting Living Benefits when Available 76% 74% 74% 72% 71% 71% 71% 70% 69% 68% 67% 66% 64% 62% 2011Q1 2011Q3 Source: LIMRA Secure Retirement Institute , as of Nov 2014 2012Q1 2012Q3 2013Q1 2013Q3 2014Q1 12 6 28/11/2014 The Art of Indexing Pandora's box has been opened through an unprecedented market environment Customized indices are now core to most product development in FIA space New index creation creates opportunities and challenges for annuity providers Long-term view on product development is key 13 Art of Indexing in Annuity Space An Overview of Key Considerations Volatility Control Mechanism Index Fee 200 300 Uncontrolled Vol No Drag 5% Vol Target Hypothetical Returns Hypothetical Returns 180 160 140 120 100 1% Drag 250 200 150 100 80 50 60 0 1 2 3 4 5 6 7 8 9 0 10 1 2 3 4 5 6 7 8 9 10 Years Years Excess Return or Total Return Diversification and Volatility 220 200 Total Return Index Concentrated Portfolio Excess Return Index 175 Diversified Portfolio Hypothetical Returns Hypothetical Returns 180 140 100 150 125 100 75 60 50 0 1 2 3 4 5 Years 6 7 8 9 10 0 1 2 3 4 5 6 7 8 9 10 Years Analysis is for illustrative purposes and is not indicative of future results 14 7 28/11/2014 Benchmark Deviation 170 160 150 140 130 120 110 100 90 80 Jan-11 Jul-11 Jan-12 Jul-12 SPX Jan-13 Jul-13 Jan-14 Jul-14 SPXTR-ER 5% VC P2P Source: Goldman Sachs Securities Division, as of Nov 2014 Past performance not indicative of future results 15 Index Selection…No Free Ride Index Sharpe Ratio SPX 0.11 SPXTR-ER 5% VC 0.25 220 200 180 160 140 120 100 80 2000 2001 2002 2003 2004 2005 2006 SPX P2P 2007 2008 2008 2009 2010 2011 2012 2013 2014 SPXTR-ER 5% VC P2P Source: Goldman Sachs Securities Division, as of Nov 2014 Assumptions Constant 400 bps annual budget Compare SPX point-2-point performance vs. SPXTR excess return 5% volatility controlled uncapped point-2-point Past performance not indicative of future results 16 8 28/11/2014 Conclusion Customized indices in the insurance space are the most significant innovation since the launch of the VA business. Regulatory challenges persist as the market continues to evolve “With great power comes great responsibility” 17 9 11/28/2014 The Last 10 Years Of Retirement Products: A Consultant’s Viewpoint MILLIMAN FINANCIAL RISK MANAGEMENT LLC Ken Mungan, FSA, MAAA 10th Annual Equity Based Insurance Guarantee Conference (Chicago) 18 November 2014 (1330 – 1430 hours) PROPRIETARY & CONFIDENTIAL LIMITATIONS AND DISCLOSURES • • • • • • 2 For investment professionals use only. Not for public use or distribution. Past performance is not indicative of future results. Recipients must make their own independent decisions regarding any strategies or securities or financial instruments mentioned herein. Milliman Financial Risk Management LLC does not make any representations that products or services described or referenced herein are suitable or appropriate for the recipient. Many of the products and services described or referenced herein involve significant risks, and the recipient should not make any decision or enter into any transaction unless the recipient has fully understood all such risks and has independently determined that such decisions or transactions are appropriate for the recipient. Any discussion of risks contained herein with respect to any product or service should not be considered to be a disclosure of all risks or a complete discussion of the risks involved. The recipient should not construe any of the material contained herein as investment, hedging, trading, legal, regulatory, tax, accounting or other advice. The recipient should not act on any information in this document without consulting its investment, hedging, trading, legal, regulatory, tax, accounting and other advisors. Milliman Financial Risk Management LLC does not ensure a profit or guarantee against loss. PROPRIETARY & CONFIDENTIAL 1 11/28/2014 Agenda • VA Market Landscape and Product Trends • Risk Management Technique Updates • The Managed Risk Fund Landscape • Managed Risk Funds At work • Impact of risk management on reserves and capital 3 PROPRIETARY & CONFIDENTIAL ACLI Presentation 2004 Risk Management Challenges • Insurers need to manage economic risks & balance – Regulatory, analyst, & accounting – Product marketplace requirements • We now live in a high volatility world – Insurers exposed to much greater risk – Regulatory & accounting environment changing drastically – Policyholders demand protection 4 PROPRIETARY & CONFIDENTIAL 2 11/28/2014 Yields at Historically Low Levels Corporate Bond Yields 50% A, 50% BBB Public Market Conditions on December 26, 2003 Gross Yield (BEY) 2.53% 4.05% 4.66% 5.10% Maturity 2 5 7 10 5 PROPRIETARY & CONFIDENTIAL Yield Summary Corporate Bond Yields: 50% A / 50% BBB Public 9.0% 8.0% 7.0% 6.0% 5.0% 2 Yr 6 5 Yr 7 Yr Jan-03 Sep-02 May-02 Jan-02 Sep-01 May-01 Jan-01 Sep-00 May-00 Jan-00 Sep-99 Jan-99 May-99 Sep-98 May-98 Jan-98 4.0% 3.0% 2.0% 1.0% 0.0% 10 Yr PROPRIETARY & CONFIDENTIAL 3 11/28/2014 Equity Risk Index Returns Period 2003 2002 2001 2000 1999 7 S&P 500 Russell 2000 27% 47% -22% -20% -12% 3% -9% -3% 21% 21% NASDAQ 49% -31% -21% -39% 86% Bond 5% 10% 9% 12% -1% PROPRIETARY & CONFIDENTIAL Regulatory Environment • Statutory regulation has not kept pace with changing capital markets • Insurers adopt strategies to “arbitrage” discrepancies • Fundamental economic risks will prevail – Regulation will evolve – Exposed to regulatory change 8 PROPRIETARY & CONFIDENTIAL 4 11/28/2014 Accounting Framework • Competing objectives – Management of economic risks – Stable GAAP income • Objectives are converging – Example: GMDB reserves, DAC process & hedging program – Technology & data management challenge 9 PROPRIETARY & CONFIDENTIAL Variable Annuities • Implications of market downturn – Existing business less profitable than expected – Guarantee benefits exposure – Awareness of risks • Rating agencies, regulators, analysts • Significant opportunity for increased sales & asset growth! 10 PROPRIETARY & CONFIDENTIAL 5 11/28/2014 VA Policyholder Research Policyholder Behavior Analysis Asset Allocations by Issue Year Issue Year 2003 2002 2001 1995 - 2000 Stock 42% 44% 56% 63% Money Mkt & Bond Fixed Account 22% 36% 18% 38% 20% 24% 13% 25% Volatility 8.9% 9.2% 11.4% 13.1% Market downturn has changed behavior. 11 PROPRIETARY & CONFIDENTIAL Demographic Factors Policyholder Behavior Analysis Asset Allocations by Age Group Issue Age 0 to 49 50 to 59 60 to 69 70 to 79 80+ Volatility 12.6% 11.4% 9.8% 8.5% 8.0% ● Women select less aggressive allocations than men (Volatility 0.5% lower). ● No anti-selection by benefit type. 12 PROPRIETARY & CONFIDENTIAL 6 11/28/2014 Behavior Analysis • Market down-turn has raised policyholder awareness of risks • Older customers favor less aggressive strategies • Market experience & demographic trends create strong demand for insurance products • Opportunities: – VA guarantees – Asset allocation assistance – Flexible pay-down / withdrawal products 13 PROPRIETARY & CONFIDENTIAL VA Guarantee Hedging Comparison of Results Accumulated Net G/L after 10 Years -- with and without Dynamic Hedging $10 Billion of Initial Premium Mix of MAV, Rollup, ROP, and EEB 20 Scenarios 200,000 150,000 Accumulated Net G/L after 10 Yrs ($000's) 100,000 50,000 0% (50,000) 20% 40% 60% 80% 100% 120% 140% Gross Cumulative 10 Yr Return (100,000) (150,000) (200,000) Accumulated Net G/L at 10 yrs with Dynamic Hedging (250,000) Accumulated Net G/L at 10 yrs without Dynamic Hedging (300,000) 14 PROPRIETARY & CONFIDENTIAL 7 11/28/2014 Leadership is Critical! • Variable product management – Risk / return analysis is complex • GAAP: DAC, SOP, Hedging • Statutory: New RBC Rules • Market position: Sales vs. Safety – Investment in technology for a competitive edge – Balance competing objectives – CEO & CFO involvement is critical! 15 PROPRIETARY & CONFIDENTIAL Moody’s Insurance Conference 2009 • VA writers’ stock prices declined dramatically during the financial crisis • Milliman Research: Develop a comprehensive model to estimate the market sensitivity of an illustrative $1 billion VA business • Typical GMWB design • Model operational & distribution expenses • Fixed & variable expense structure • Assume commissions funded via debt-financing • Evaluate various levels of guarantee & base revenue hedging • Model all aspects on a risk-neutral basis 16 PROPRIETARY & CONFIDENTIAL 8 11/28/2014 50,000,000 40,000,000 30,000,000 20,000,000 10,000,000 -20% -10% 0% 10% 20% (10,000,000) (20,000,000) EPV Profit No Hedging EPV Profit: 100% Gtee Hedged EPV Profit: 100% Gtee Hedged, 100% Base Product Revenue Hedged Full Guarantee Hedging Implies a Beta of 1.74, Assuming 2% Capital 17 PROPRIETARY & CONFIDENTIAL Experience = 202% 18 PROPRIETARY & CONFIDENTIAL 9 11/28/2014 19 PROPRIETARY & CONFIDENTIAL Initial Conclusions • VA business is highly market sensitive • Market valuation reflects a high degree of market sensitivity – Conservative view on guarantee hedging – Potential costs of default events • More benefit can be derived from – Redesigning benefits & product structure to reduce market sensitivity & stabilize margins • Less benefit from simply increasing capital 20 PROPRIETARY & CONFIDENTIAL 10 11/28/2014 Existing VA Business Model Funds Stocks Insurer Balance Sheet Guarantee Fee Bonds 21 ■Guarantee Liability ■Hedge Assets ■P&L Volatility PROPRIETARY & CONFIDENTIAL Sustainable VA Business Model Funds Insurer Balance Sheet ■Reduced & Stabilized Guarantee Liability Stocks Bonds & Hedges Reduced Guarantee Fee ■Reduced P&L Volatility ■ Transfer of Hedge Breakage & Basis Risk to Policyholder ■ Reduced Behavior Risk 22 PROPRIETARY & CONFIDENTIAL 11 11/28/2014 VA Market Landscape and Product Trends PROPRIETARY & CONFIDENTIAL Significant moves by key players 24 PROPRIETARY & CONFIDENTIAL 12 11/28/2014 Trends in VA Market • • • • • • Demand for guarantees remains strong in spite of higher prices and less generous features, and living benefit rider take-up rates are in excess of 90% compared with pre-crisis levels of 50-70%. GMWBs continue to be the most widespread VA feature and in 2014, policies with a GMWB rider represented 71% of sales. Lifetime income riders which guarantee minimum annual income of 4-6% of account values for life have also been popular. Many insurers including MetLife and Lincoln have begun mandating allocations to low-volatility sub-accounts that have embedded hedging. Insurers have also mitigated policyholder behavior risk by mandating automatic sub-account rebalancing and/or restricting investment options. Insurers are incentivizing customer surrenders and annuitization to accelerate the run-off of low-return blocks. 25 PROPRIETARY & CONFIDENTIAL Driving the Pullback Profitability 26 • Competitive market place • Low interest rate environment • Customer value proposition Earnings Volatility • US GAAP earnings volatility is high versus other lines of business Capital Intensity • Capital requirements potentially increasing • Potential new capital requirements for certain companies (SIFI) • Potentially higher ROC on other products / regions Managing Legacy Inforce • Products are long-term, ranging from 5-40 years • Older products had less restrictions Policyholder Behavior Assumptions • Experience is beginning to emerge around policyholder behavior • Lapses have tended to be lower than assumed • Withdrawal utilization has shown to be less than optimal PROPRIETARY & CONFIDENTIAL 13 11/28/2014 In-force Management Increase Fees • Many companies have increased fees on existing riders Fund Restrictions and Replacement • Removal of most aggressive asset allocation models • Substitution of actively managed funds with index funds • Substitution of static allocation models with risk-managed funds Rider Buyback Programs • Optional programs to entice policyholders to cancel rider with a benefit • Offered by Transamerica, AXA, Hartford, Voya Transactions / Reinsurance 27 • CIGNA reinsured in-force to Berkshire Hathaway • Lincoln entered into a reinsurance agreement with Wells Fargo PROPRIETARY & CONFIDENTIAL Product Trends Reduce Benefits / Increase Fees 28 • Continued reduction in richness of benefits • Increased fees Risk-managed Funds • Biggest trend in new product design • Majority of top VA writers mandate use of risk-managed funds for us with guarantees • Second generation offer a variety of risk-managed funds Investment Only Variable Annuities (IOVA) • Value proposition is a wide variety of fund choices • Jackson National has made this popular • Several companies have increased their targeted sales of Variable Annuities with no guarantees Deferred Income Annuity (DIA) • Use of DIA to address longevity risk for policyholders • Previously some companies sold as longevity insurance • Decouples equity and longevity risk PROPRIETARY & CONFIDENTIAL 14 11/28/2014 Milliman Hedge Cost Index • • • Source: Milliman Hedge Cost Index 29 The Milliman Hedge Cost Index™ (MHCI) provides the estimated hedging cost for a hypothetical lifetime guaranteed minimum withdrawal benefit (“Lifetime GMWB”) block The MHCI is a widely used reference point for insurance companies, investment banks, hedge funds, and others that participate in the VA marketplace as issuers or investors. The expected hedge cost for a hypothetical lifetime GMWB block was 82 bps as of September 2014, up 22 bps from the recent low as of Dec 2013. PROPRIETARY & CONFIDENTIAL THE MANAGED RISK FUND LANDSCAPE PROPRIETARY & CONFIDENTIAL 15 11/28/2014 An Overview of Managed Risk Funds Total VA Managed Risk Funds have about $200 billion of AUM as of 3/31/2014 0.6% 0.2% 5.0% In descending distribution order Asset Allocation Volatility Management and Related Strategies Risk Parity Asset Allocation 25.5% 68.8% Risk Parity Asset Allocation/Downside Asset Allocation/Downside Protection Protection Equity Equity Minimum Vol Volatility Minimum Volatility Management Milliman Managed Risk 31 PROPRIETARY & CONFIDENTIAL MANAGED RISK FUND STRATEGIES 32 • Managed Risk Strategy – A futures based strategy that has both the volatility management and capital protection components • Volatility Management – A derivatives based strategy that seeks to meet a preset volatility target • Asset Allocation – Dynamically allocate asset exposures based on momentum signals to reduce overall portfolio volatility • Asset Allocation/Downside Protection - Dynamically allocate asset exposures based on momentum signals to reduce overall portfolio volatility and purchase put options • Risk Parity - Allocate across equities, fixed income and commodities, such that each asset class contributes an equal share of risk • Equity Minimum Volatility – Allocate assets to stocks with historically low volatility PROPRIETARY & CONFIDENTIAL 16 11/28/2014 Considerations for VA Writers when Implementing Managed Risk Funds Basis Risk • Frequent rebalancing makes regression based approaches ineffective • Requires daily allocations Hedging Residual Risk • Residual risk remains and may be hedged • Requires detailed modeling of strategy to determine residual risk GAAP Impact • Target volatility allows move away from implied volatility Reserve and Capital Credit • Strategy needs to be transparent enough to model and provide justification to get reserve and capital credit 33 PROPRIETARY & CONFIDENTIAL RISK MANAGED FUNDS – BEYOND VA MARKET Risk Managed Mutual Funds AUM = 150.1 Billion 7% 33% 26% Tactical Risk Management Long/Short Equity Multialternative Derivative Hedged Equity 33% Source: Wall Street Journal Article (June 2nd, 2014 - Alternative Mutual Funds) and analysis of Morningstar data 34 PROPRIETARY & CONFIDENTIAL 17 11/28/2014 HEDGE VEHICLE COMPARISONS • Implementing a managed risk fund involves choosing how the hedging operation will be implemented Risk Management Strategy 35 Advantages Disadvantages Futures • • • • • Options • Convexity pickup for intraday large movements • No interference with security selection process • Up-front costs • Volatility risk premium • Limited availability, particularly for longer term and far out-of-the money options • Potential basis mismatch Asset Transfer • Match hedge target exactly • Cleanly hedge fixed income exposure • • • • Low implementation cost Ability for intra-day trading High liquidity Vast market depth No interference with security selection process • • • No convexity pickup Potential basis mismatch Futures contracts may not exist for certain instruments Inability to trade more than once per day Disrupts security selection process Potentially large swings in underlying weights Higher transaction costs PROPRIETARY & CONFIDENTIAL MANAGED RISK FUND UNIVERSE • The appropriate peer group includes funds that have an active risk management strategy (e.g. targeting a specific risk level, using a derivatives overlay to limit downside) • This does not include funds that look at risk management as part of their standard asset allocation decisions • The Peer Group Comparison Charts plot each fund based on its risk/return profile • Well performing funds should • Hit their risk management target • Preserve a reasonable amount of market return 36 PROPRIETARY & CONFIDENTIAL 18 11/28/2014 MANAGED RISK VIT UNIVERSE – 2013 RESULTS 50% 40% S&P 500 30% Developed Return 20% 10% 0% Barclays Emerging -10% -20% 0.0% 2.0% 4.0% 6.0% 8.0% 10.0% 12.0% 14.0% 16.0% Volatility 37 PROPRIETARY & CONFIDENTIAL MANAGED RISK VIT UNIVERSE – 2014 YTD RESULTS 15% Emerging S&P 500 10% 5% Return Barclays Developed 0% -5% -10% 0.0% 2.0% 4.0% 6.0% 8.0% 10.0% 12.0% 14.0% 16.0% 18.0% Volatility 38 PROPRIETARY & CONFIDENTIAL 19 11/28/2014 MANAGED RISK FUNDS AT WORK PROPRIETARY & CONFIDENTIAL THE MANAGED RISK STRATEGY • The Managed Risk Strategy includes two sophisticated risk management techniques: • Volatility Management • Capital Protection Strategy • The Managed Risk Strategy reduces downside exposure and increases the likelihood that investors can achieve funding objectives 40 PROPRIETARY & CONFIDENTIAL 20 11/28/2014 VOLATILITY MANAGEMENT • Current Asset Allocation • Targets a specific equity allocation (i.e. 60%) as a proxy for risk • Maintains constant equity allocation regardless of market conditions • Target Volatility Asset Allocation • Targets a specific volatility level directly via a futures overlay • Seeks to prevent portfolio volatility from dramatically increasing during crises 41 PROPRIETARY & CONFIDENTIAL CAPITAL PROTECTION STRATEGY • Capital Protection Strategy seeks to reduce losses in adverse market environments • The investor’s portfolio is mapped to major market indices • Use simple, liquid exchange-traded hedge instruments to replicate a 5-year rolling maturity put option • This provides a cushion against losses during major market declines 42 PROPRIETARY & CONFIDENTIAL 21 11/28/2014 USE OF DERIVATIVES • Both components of the Managed Risk Strategy are implemented with exchange-traded futures contracts • Futures are liquid, transparent and cash settle every day • Alternatives (i.e. put options) have historically included a significant “riskmargin” which will tend to gradually deplete fund values over time • Volatility management ensures that futures can be used to replicate a put option with a high degree of reliability 43 PROPRIETARY & CONFIDENTIAL VOLATILITY MANAGEMENT AT WORK • Our research shows that volatility models continue to forecast future short term volatility accurately • The plot below shows that a strategy using a volatility model to target a 10% volatility tends to do so within narrow band. 45.0% 40.0% 35.0% 30.0% 25.0% 20.0% 15.0% 10.0% 5.0% 0.0% Q1 '09 Q2 '09 Q3 Q4 - Q1 '09 09 '10 Q2 '10 Q3 '10 Q4 '10 Q1 '11 90% Confidence Interval Q2 '11 Q3 '11 Q4 '11 Q1 '12 Q2 '12 Static Allocation Q3 '12 Q4 '12 Q1 '13 Q2 '13 Q3 '13 Q4 '13 Volatility Model Milliman Volatility Model Source: Milliman Financial Risk Management LLC. The performance shown is historical, for informational purposes only, and does not guarantee future results. The performance figures do not reflect charges specific to an individual’s contract, such as cost of insurance, mortality and expense risks charges, riders and sales charges, which would negatively affect performance. Shares of the Portfolio are sold only through variable policies and are not available to the general public. Investment return and principal value of an investment will fluctuate so that an investor’s shares, when redeemed, may be worth more or less than their original cost. Current performance may be lower or higher than the performance data quoted. The backtesting rates of return are hypothetical historical illustrations and do not represent the returns of any particular investment portfolio. 44 PROPRIETARY & CONFIDENTIAL 22 11/28/2014 CAPITAL PROTECTION STRATEGY Reduce Losses in Adverse Environments • Map the current portfolio to major market indices • Use exchange-traded equity futures contracts on those indices to replicate a rolling maturity put option on the portfolio • The result: a cushion against losses is created during major market declines Behavior of Cushion (created by cash payoffs from futures contracts) If the market rises, some cash is lost, but the losses quickly plateau. The more the market falls, the more rapidly the cash cushion grows. 45 THESE RESULTS ARE BASED ON SIMULATED OR HYPOTHETICAL PERFORMANCE RESULTS THAT HAVE CERTAIN INHERENT LIMITATIONS. UNLIKE THE RESULTS SHOWN IN AN ACTUAL PERFORMANCE RECORD, THESE RESULTS DO NOT REPRESENT ACTUAL TRADING. ALSO, BECAUSE THESE TRADES HAVE NOT ACTUALLY BEEN EXECUTED, THESE RESULTS MAY HAVE UNDER-OR OVER-COMPENSATED FOR THE IMPACT, IF ANY, OF CERTAIN MARKET FACTORS, SUCH AS LACK OF LIQUIDITY. SIMULATED OR HYPOTHETICAL TRADING PROGRAMS IN GENERAL ARE ALSO SUBJECT TO THE FACT THAT THEY ARE DESIGNED WITH THE BENEFIT OF HINDSIGHT. NO REPRESENTATION IS BEING MADE THAT ANY ACCOUNT WILL OR IS LIKELY TO ACHIEVE PROFITS OR LOSSES SIMILAR TO THESE BEING SHOWN. PROPRIETARY & CONFIDENTIAL THE Managed Risk Strategy – LIVE PORTFOLIOS • Fund performance has demonstrated the benefits of the Managed Risk Strategy in reducing downside exposure while allowing upside participation Source: Milliman Financial Risk Management LLC, 6/9/11 – 8/31/14. The performance shown is historical, for informational purposes only, not reflective of any investment, and does not guarantee future results. The performance figures do not reflect charges specific to an individual’s contract, such as cost of insurance, mortality and expense risks charges, riders and sales charges, which would negatively affect performance. Shares of the Portfolio are sold only through variable policies and are not available to the general public. Investment return and principal value of an investment will fluctuate so that an investor’s shares, when redeemed, may be worth more or less than their original cost. Current performance may be lower or higher than the performance data quoted. 46 PROPRIETARY & CONFIDENTIAL 23 11/28/2014 Impact on Reserves & Capital PROPRIETARY & CONFIDENTIAL Evolution of Risk Management Strategies 48 PROPRIETARY & CONFIDENTIAL 24 11/28/2014 HYPOTHETICAL LIFETIME GMWB – ASSUMPTIONS VA Product Details •Lifetime guaranteed minimum withdrawal benefit (GMWB) with tiered withdrawals, 5% at Age 65 •Starting AV of $1,000,000, Rider charge of 1%, M&E of 2% •Industry representative mortality, lapse, and utilization assumptions •Underlying fund is a generic 70/30 equity/bond fund. •Volatility management target is 16% •Same product and cells as used to create Milliman Guarantee Index Hedge Costs 49 PROPRIETARY & CONFIDENTIAL HYPOTHETICAL LIFETIME GMWB – ASSUMPTIONS Conditional Tail Expectation (CTE) Details •AAA Scenarios with daily bridging for protected fund •PV Worst Accumulated Surplus for living benefit rider only •Assumes newly issued policies with starting account value adjusted for historical fund performance at each quarter end •Three sets of results: • Real World (RW) Traditional Fund / CTE Traditional Fund – Historical performance based on non-managed risk returns, forward looking CTE scenarios based on non-managed risk returns. • RW Managed Risk / CTE Traditional Fund – Historical performance based on managed risk returns, forward looking CTE scenarios based on non-managed risk returns. Represents outcome if no credit for managed risk strategy is assumed in forward looking CTE scenarios. • RW Managed Risk / CTE Managed Risk – Historical performance based on managed risk returns, forward looking CTE scenarios based on projected managed risk returns. Represents outcome if reserve/capital benefit from managed risk strategy credit is assumed in forward looking CTE scenarios. 50 PROPRIETARY & CONFIDENTIAL 25 11/28/2014 HYPOTHETICAL LIFETIME GMWB HISTORICAL RETURNS The underlying portfolio consists of 70% S&P 500 and 30% Barclays Aggregated with an 80bps annual fee for the underlying portfolio and a 100bps annual fee for the risk managed portfolio. The 20bps difference represents the cost of the risk management strategy. THESE RESULTS ARE BASED ON SIMULATED OR HYPOTHETICAL PERFORMANCE RESULTS THAT HAVE CERTAIN INHERENT LIMITATIONS. UNLIKE THE RESULTS SHOWN IN AN ACTUAL PERFORMANCE RECORD, THESE RESULTS DO NOT REPRESENT ACTUAL TRADING. ALSO, BECAUSE THESE TRADES HAVE NOT ACTUALLY BEEN EXECUTED, THESE RESULTS MAY HAVE UNDER-OR OVER-COMPENSATED FOR THE IMPACT, IF ANY, OF CERTAIN MARKET FACTORS, SUCH AS LACK OF LIQUIDITY. SIMULATED OR HYPOTHETICAL TRADING PROGRAMS IN GENERAL ARE ALSO SUBJECT TO THE FACT THAT THEY ARE DESIGNED WITH THE BENEFIT OF HINDSIGHT. NO REPRESENTATION IS BEING MADE THAT ANY ACCOUNT WILL OR IS LIKELY TO ACHIEVE PROFITS OR LOSSES SIMILAR TO THESE BEING SHOWN. 51 PROPRIETARY & CONFIDENTIAL HYPOTHETICAL LIFETIME GMWB US STATUTORY RESERVE – CTE 70 Risk managed funds provide reduced volatility of capital even without credit for protection in reserve scenarios Metric Average Standard Deviation RW Traditional/ CTE70 Traditional 14,242 33,029 RW Risk Managed/ CTE70 Traditional 6,861 10,377 RW Risk Managed/ CTE70 Risk Managed 2,904 8,607 The underlying portfolio consists of 70% S&P 500 and 30% Barclays Aggregated with an 80bps annual fee for the underlying portfolio and a 100bps annual fee for the risk managed portfolio. The 20bps difference represents the cost of the risk management strategy. 52 THESE RESULTS ARE BASED ON SIMULATED OR HYPOTHETICAL PERFORMANCE RESULTS THAT HAVE CERTAIN INHERENT LIMITATIONS. UNLIKE THE RESULTS SHOWN IN AN ACTUAL PERFORMANCE RECORD, THESE RESULTS DO NOT REPRESENT ACTUAL TRADING. ALSO, BECAUSE THESE TRADES HAVE NOT ACTUALLY BEEN EXECUTED, THESE RESULTS MAY HAVE UNDER-OR OVER-COMPENSATED FOR THE IMPACT, IF ANY, OF CERTAIN MARKET FACTORS, SUCH AS LACK OF LIQUIDITY. SIMULATED OR HYPOTHETICAL TRADING PROGRAMS IN GENERAL ARE ALSO SUBJECT TO THE FACT THAT THEY ARE DESIGNED WITH THE BENEFIT OF HINDSIGHT. NO REPRESENTATION IS BEING MADE THAT ANY ACCOUNT WILL OR IS LIKELY TO ACHIEVE PROFITS OR LOSSES SIMILAR TO THESE BEING SHOWN. PROPRIETARY & CONFIDENTIAL 26 11/28/2014 HYPOTHETICAL LIFETIME GMWB US STATUTORY CAPITAL – CTE 90 Risk managed funds provide reduced volatility of capital even without credit for protection in reserve scenarios Metric Average Standard Deviation RW Traditional/ CTE90 Traditional 36,534 65,241 RW Risk Managed/ CTE90 Traditional 20,543 29,946 RW Risk Managed/ CTE90 Risk Managed 8,552 24,405 The underlying portfolio consists of 70% S&P 500 and 30% Barclays Aggregated with an 80bps annual fee for the underlying portfolio and a 100bps annual fee for the risk managed portfolio. The 20bps difference represents the cost of the risk management strategy. 53 THESE RESULTS ARE BASED ON SIMULATED OR HYPOTHETICAL PERFORMANCE RESULTS THAT HAVE CERTAIN INHERENT LIMITATIONS. UNLIKE THE RESULTS SHOWN IN AN ACTUAL PERFORMANCE RECORD, THESE RESULTS DO NOT REPRESENT ACTUAL TRADING. ALSO, BECAUSE THESE TRADES HAVE NOT ACTUALLY BEEN EXECUTED, THESE RESULTS MAY HAVE UNDER-OR OVER-COMPENSATED FOR THE IMPACT, IF ANY, OF CERTAIN MARKET FACTORS, SUCH AS LACK OF LIQUIDITY. SIMULATED OR HYPOTHETICAL TRADING PROGRAMS IN GENERAL ARE ALSO SUBJECT TO THE FACT THAT THEY ARE DESIGNED WITH THE BENEFIT OF HINDSIGHT. NO REPRESENTATION IS BEING MADE THAT ANY ACCOUNT WILL OR IS LIKELY TO ACHIEVE PROFITS OR LOSSES SIMILAR TO THESE BEING SHOWN. PROPRIETARY & CONFIDENTIAL HYPOTHETICAL LIFETIME GMWB US STATUTORY CAPITAL – Standard Scenario Risk managed funds provide reduced volatility of capital even without credit for protection in reserve scenarios Amount The underlying portfolio consists of 70% S&P 500 and 30% Barclays Aggregated with an 80bps annual fee for the underlying portfolio and a 100bps annual fee for the risk managed portfolio. The 20bps difference represents the cost of the risk management strategy. 54 THESE RESULTS ARE BASED ON SIMULATED OR HYPOTHETICAL PERFORMANCE RESULTS THAT HAVE CERTAIN INHERENT LIMITATIONS. UNLIKE THE RESULTS SHOWN IN AN ACTUAL PERFORMANCE RECORD, THESE RESULTS DO NOT REPRESENT ACTUAL TRADING. ALSO, BECAUSE THESE TRADES HAVE NOT ACTUALLY BEEN EXECUTED, THESE RESULTS MAY HAVE UNDER-OR OVER-COMPENSATED FOR THE IMPACT, IF ANY, OF CERTAIN MARKET FACTORS, SUCH AS LACK OF LIQUIDITY. SIMULATED OR HYPOTHETICAL TRADING PROGRAMS IN GENERAL ARE ALSO SUBJECT TO THE FACT THAT THEY ARE DESIGNED WITH THE BENEFIT OF HINDSIGHT. NO REPRESENTATION IS BEING MADE THAT ANY ACCOUNT WILL OR IS LIKELY TO ACHIEVE PROFITS OR LOSSES SIMILAR TO THESE BEING SHOWN. PROPRIETARY & CONFIDENTIAL 27 11/28/2014 VA Writers’ Risk Position Has Improved • Risk managed funds significantly reduce the risks faced by VA writers • Improved stability of capital & reserves • Preventing portfolio volatility from dramatically increasing during crises • Providing a cushion against losses during major market declines • Align competing hedging objectives • A more stable AV is beneficial to any hedging and accounting objective • M&E income is stabilized, leading to smoother DAC amortization 55 PROPRIETARY & CONFIDENTIAL Milliman, Inc. Financial Risk Management LLC 71 S. Wacker Dr. - 31st Floor Chicago, IL 60606 Ph: +1 312 726. 0677 Fx: +1 312 499 5700 www.milliman.com PROPRIETARY & CONFIDENTIAL 28 VA Hedging Lessons Learned Andrew Rallis, EVP & Global Chief Actuary, MetLife 10th Annual Equity Based Insurance Guarantee Conference (Chicago) 18 November 2014 (1330 – 1430 hours) 1 Top Ten List of Things that Matter (2004) 1. Accounting 2. Software 3. Hardware 4. Communication 5. Accountability 6. Delta 7. Interest rates 8. Volatility 9. Behavior 10. Risk profile 2 1 Top Ten List of Things that Really Matter (2014) 1. Liquidity 2. Scale 3. Capital 4. Transparency 5. Accountability 6. Cross-Greeks 7. Interest rates 8. Volatility Control 9. Behavior 10. Risk Appetite 3 Why Accounting Matters • • • • Economic vs GAAP vs Stat Economic gain or loss GAAP income volatility Statutory solvency Small product variations can drive big changes in strategy 4 2 Why Software Matters • • • • • Production Environment Speed of Execution Connectivity Support Consistency of Hedge and Reserve calculations • Stochastic-in-stochastic 5 Why Hardware Matters • • • • Test vs Production Environment Distributed Processing Speed of Execution Security 6 3 Why Communication Matters • Internal Constituents – – – – – Boards of Directors Executive Group Risk Management Treasury and Valuation Auditing • External Constituents – Regulators – Rating Agencies 7 Why Accountability Matters: Roles & Responsibilities I Function Responsible Unit Project Management Program Scope Program Implementation Program Monitoring ALM Unit ALM Unit ALM Unit Risk Analysis / Product Considerations Product / Business Specifications Hedge Level Determination New Funds Product Development ALM Unit Product Management & Marketing 8 4 Roles & Responsibilities II Function Responsible Unit Project Structure State Filings of Reinsurance Treaties Monitor Impact on Captive Reinsurance Unit Reinsurance Unit Accounting Aspects Overall Accounting Treatment Operational Accounting Structure Transactional Accounting Accounting Oversight Margin Account Maintenance Accounting Technical Services Controllers - Controls (SOX & Technical Accounting) Controllers - Controls Reporting & Specialized Acct Derivative Accounting 9 Roles & Responsibilities III Function Responsible Unit Financial Management & Reporting GAAP & STAT Financials Reserves - Reporting DAC Calculations SOP Reserves Tax Issues Business Finance Valuation Unit Actuarial Services Actuarial Services Tax Department Corporate Oversight Program Oversight Enterprise Risk Management Impact Auditing Corporate Risk Management Corporate Risk Management Internal Auditing 10 5 Roles & Responsibilities IV Function Investment Aspects Trading Investments VA Portfolio Management Responsible Unit Derivatives Unit Portfolio Management Unit Cash & Capital Management Cash Management Capital Management Board Resolution Corporate Treasury Corporate Treasury Legal Information Technology (IT) Aspects IT Project Manager Administrative Systems Software (MGHedge) Maintenance IT IT Milliman (Consultants) 11 Why Delta Matters • Delta = Sensitivity of Economic Value to equity movements • SOP liabilities less sensitive to equity movements • Balance hedging of Economic Value to GAAP income volatility 12 6 Why Interest Rates Matter • Rho – Sensitivity of Economic Value to interest rate movements – Discounting of claims and fees – Bond fund performance – Level of claims (GMIB in-the-moneyness) • Cross Greeks – Impact on dynamic delta hedging 13 Why Volatility Matters • Vega = Sensitivity of Economic Value to equity volatility movements • SOP liabilities not as sensitive to these movements – SOP 03-1 Paragraph 31 – implied vol versus historic vol • Balance hedging of Economic Value to GAAP income volatility 14 7 Key Rate Vega 12.0% 10.0% 8.0% Vega, % Total 6.0% 4.0% 2.0% 1.30 1 0.0% Maturity Bucket, years 19 16 13 10 7 4 1.00 ITM 0.70 15 Why Behavior Matters • • • • Little experience Uncertainty in calibrating parameters Un-hedgeable We use a binomial model for assessing residual behavior risk • Typically 1-2% of account value 16 8 Why Risk Profile Matters • Diversification offsets • Managing total company interest rate risk • C3 Phase II -> C1 Equity component for covariance offset – impact various by legal entity • Internal economic capital formulas 17 Why Liquidity Really Matters In a crisis , difficult to move assets • Counterparties • Systemic Risk? • Dodd-Frank 18 9 Why Scale Really Matters • Sophisticated Hardware and Software – Nested Stochastics – Cloud Computing • Key Personnel • Model Calibration 19 Why Transparency Really Matters • Stakeholders’ sophistication • Continuity • Complexity 20 10 Why Accountability Really Matters • Attract & Retain Key Staff • Decision Making 21 Why Cross Greeks Really Matter Delta vs. parallel shift in Int Rates Delta: sensitivity to 1% shift in all equity indices simultaneously 14 Total GMIB Delta Euro Put 12 10 8 6 4 2 -150 -100 -50 0 50 100 150 Yield Curve Shifts 22 11 Why Interest Rates Really Matter • Managed Interest Rate Environment • Does Mean Reversion Exist ? • How Risky Are Bond Funds ? 23 Why Volatility Control Matters • Limited supply of vol • Accounting asymmetry • Principle protection 24 12 Why Behavior Really Matters • • • • Un-hedgeable Emerging Experience Valuations are highly leveraged Predictive Modeling 25 Why Risk Appetite Really Matters • How much is too much? • Governance 26 13 VA Hedging Lessons Learned 27 14