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Innovation in the Asset Management Industry: Risk Measurement and Risk Management The European Colloquia 2010, London Robert C. Merton Harvard Business School European Colloquia Series: Towards a New Architecture London January 28, 2010 Domain of Investment Management: Stages of Production Process Passive Well-Diversified Efficient Portfolio “Efficient Exposures” Active Asset-Class Allocation Macro Sector Market Timing Superior Performing Micro Aggregate Excess-Return Portfolio “Alpha Engines” Super Efficient Portfolio of Risky Assets (Optimal Combination of Risky Assets) Riskless Asset Portfolio • Components of Best Performing Risky Assets Only Portfolio: •Risk Modulation through Hedging or Leveraging •Diversification Risk Modulation •Market Timing Active Management Copyright © 2010 by Robert C. Merton Optimal Portfolio of Assets Alter Shape of Payoffs on Underlying Optimal Portfolio Structured Efficient Form of Payouts to Client Client Households Entrepreneurs Endowment Corporation (Derivative Securities with Non-Linear Payoffs) • Risk Modulation through Insurance or non-linear leverage • Tax efficient • Regulatory efficient • Liquidity allocation • Pre-programmed dynamic trading • “Building Block” State-Contingent Securities to create specialized payout patterns 2 Generating Superior Investment Performance: What is Alpha? Traditional Alpha-Seeking • • • • Depends on being faster, smarter, better models or better information-inputs Is it sustainable? Is it scalable? The Cost of Active Investing Non-economic costs and benefits Alpha which becomes Specialized Beta • • • Performance improvement over benchmark which can be replicated by passive strategies Hedging needs of classes of Investors: Interest rate, volatility changes, liquidity, human capital Momentum, liquidity-event risk, small cap vs. large cap stocks, value vs. growth stocks Financial-Services Alpha • • • • Institutional rigidities: regulations, charter, accounting, tax Depends on being lightly regulated, strong credit-standing, long-horizon, flexible liquidity needs, large pool of assets, reputational capital and sponsorship value Is it sustainable? Is it scalable? Is it a comparative advantage of the provider of the service? 3 Copyright © 2010 by Robert C. Merton Calculating “True” Fees for Alpha: Performance and Alpha/Beta Mix Pre-fee Return on Portfolio: R R f RM R f w w fraction in “pure” alpha and wM = fraction in “pure” beta = fraction in benchmark = Volatility “scale” active portfolio, so that it has same total volatility as benchmark #1 Annual Fee (2%, 20%) = 2.0% + .2 Call ( 2 , dividend = 2%, r, E = 1) #2 Annual Fee (1.25%, 20%) = 1.25% + .2 Call ( 2 , dividend = 1.25%, r, E = 1) M = 15% r = 5% Fee Paid #1 = 3.47% w 1 2 0.000 0.300 0.500 0.658 0.700 0.800 0.900 1.000 1.000 0.954 0.866 0.810 0.714 0.600 0.436 0.000 Fee Paid #2 2.81% 2.95% 3.24% 3.46% 3.93% 4.68% 6.45% 4 Copyright © 2010 by Robert C. Merton Effects of Infrequent Trading and Stale Prices on Performance Measurement S&P 500 Weekly Returns January 1995-December 1999 Average Annual Arithematic Return Annual Standard Deviation Correlation with S&P 500 Beta Alpha S&P 500 (0 week no trade) 24.3% 14.9% 1.000 1.000 0.0% S&P 500 (1 week no trade) 24.0% 14.1% 0.486 0.460 9.9% S&P 500 (2 week no trade) 24.3% 14.8% 0.329 0.324 12.7% S&P 500 (3 week no trade) 24.2% 15.3% 0.253 0.259 13.8% (0 week no trade) means the security trades (or is marked) once every week (1 week no trade) means the security trades (or is marked) once every two weeks (2 week no trade) means the security trades (or is marked) once every three weeks (3 week no trade) means the security trades (or is marked) once every four weeks 5 Copyright © 2010 by Robert C. Merton Estimated Beta (β) Weekly Returns January 1995 - December 1999 Security: Standard & Poor’s 500 1.25 1.00 0.75 0.50 0.25 0 1 2 3 Number of Nontraded Weeks per Traded Week Estimated Alpha (α) 0.00 15% 10% 5% Number of Nontraded Weeks per Traded Week 0 1 2 3 0% Copyright © 2010 by Robert C. Merton 6 Private Equity & Other Non-Traded Assets: Performance & Risk Gompers and Lerner 1974-1997: Sensitivity to Wrong Systematic Risk Estimate Returns All Private Equity S&P 500 Risk-Free Rate If Beta = 0, Alpha 14% 16% 6% +8% If Beta = 1.42, Alpha - 6% Core Problem: Mark-to-Market versus Non-Trading Accounting values are subject to time lags and smoothing that completely destroys correlation among measured asset returns. Indeed, asset returns have nil serial correlation in practice so that covariance between Return at time t and Return at time t+1 day=0 for the same asset. Non-trading thus artificially creates a smaller beta. Gompers-Lerner attempt to rectify with time series of returns as surrogate to actual trading using best estimate of change in price from observable data. More advanced approach would be a Brownian Bridge estimation model. Another example: Real Estate Investment Trusts (REITS) versus Direct Investment in Commercial Real Estate Fund. Copyright © 2010 by Robert C. Merton 7 Risk Measurement for Credit-Risk Assets: Nonlinear Risks of Being a Lender When There is Risk of Default RISKY DEBT + GUARANTEE OF DEBT = RISK-FREE DEBT RISKY DEBT = RISK-FREE DEBT - GUARANTEE OF DEBT Corporation Operating Assets, A Debt (face value B), D Common Stock, E A=D+E IN DEFAULT, THE HOLDER OF THE GUARANTEE RECEIVES PROMISED VALUE OF THE DEBT MINUS VALUE OF ASSETS RECOVERED FROM DEFAULTING ENTITY = MAX [0, B – A] VALUE OF GUARANTEE = PUT OPTION ON THE ASSETS OF BORROWER CREDIT DEFAULT SWAPS ARE GUARANTEES OF DEBT AND THEREFORE ARE PUT OPTIONS ON THE ASSETS OF THE BORROWER Copyright © 2010 by Robert C. Merton 8 Non-linear Credit Risk Buildup Firm/Mortgage Corporate/Household Sector Debt Liability DC DC D 'C Corporate/Housing Assets, A C Firm/Mortgage Debt Guarantee Banking System Liability A 'C AC Government Bank Deposit Liability Guarantee GB GC G 'C G 'B GC GB A 'C Copyright © 2010 by Robert C. Merton AC Corporate /Housing Assets, AC A 'B AB Bank Assets, AB 9 Performance Measurement: Market Timing and Nonlinear Risk Hedge Funds Market Timing [A “free” call or a “free” put] For Perfect Market Timing and No Borrowing or Short-Selling R p R f Max O, Rm R f Rm R f Max O, R f Rm Measuring Return to Market Timing R p R f a b Rm R f c Max O, Rm R f e p R p R f a b Rm R f c Call Return e p Hedge Fund Relative-Value Strategy [risk level change is negatively correlated with returns] R p R f a b Rm R f c Call Return e p Hedge Fund Momentum/Stop-Loss Strategy [risk level change is positively correlated with returns] R p R f a b Rm R f c Call Return e p 10 Copyright © 2010 by Robert C. Merton Beyond VAR: Put Option Price for the Portfolio as a Tail-Risk Indicator Value-at-Risk (VaR): Summary Risk Measure V(h) (p, h) V(0) (h) What is the minimum value of our portfolio at the end of time h with probability 1 – p? V (p, h) What is the amount that the portfolio could lose it or more with probability p at the end of time h? VaR (p, h) = V (0) – V (p,h) Put Option Price Reflects Rare-But-Significant Events • Robust with respect to probability distribution • Intuitive because the put price is the price of insuring the downside tail • Reflects a price for insurance versus self-insurance amount of capital • Jarrow and Van Deventer, GARP Risk Professional, August 2009 Copyright © 2010 by Robert C. Merton 11 Integrated Systemic Risk Policy: Refinancing Ratchet Effect 1996-2006 • • • • • Trend #1: rising U.S. home prices Trend #2: declining U.S. interest rates Trend #3: increasing efficiency of mortgage refinancing Each trend taken individually is beneficial or benign All three trends superimposed creates unintended synchronization of homeowner leverage • Leveraging can be done incrementally, but deleveraging cannot due to indivisibility of owner-occupied residential housing • Result: residential mortgage market is six times more vulnerable and estimated losses of $1.2 - $1.5 trillion between June 2006 and December 2008 12 Copyright © 2010 by Robert C. Merton