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Risk Adjusted Marketing Executive Summary This white paper outlines Experian’s vision for a more integrated and customer-centric application of analytics to risk and marketing decisions for credit products in retail banking. The concept of Risk Adjusted Marketing is introduced, building on the idea of ‘right person; right message; right channel; right time’ by bringing into play valuable insight from internal and external data sources that give a wider view of the customer. Risk Adjusted Marketing is a method to improve the success of marketing strategies by more actively considering the risk dimension from a customer rather than product perspective. Mosaic, the geo-demographic classification tool, is an important enabler of this approach. These concepts are discussed and developed in this white paper: Optimise the value of your customers by tailoring marketing and risk strategies to them, not to your products. Look at your customers holistically, supplemented by external data sources, rather than through separate product or marketing silos. Break the nexus between risk and marketing, by moving towards the Experian vision of an integrated Risk Adjusted Customer View database. Focus the use of expensive analytical resources where the biggest returns can be achieved. 1 Risk Adjusted Marketing Contents 2 Section 1 Risk Adjusted Return (RAR) 3 Section 2 Introducing the Concept of Risk Adjusted Marketing 4 Section 3 Risk and Marketing Processes in Banks Today 5 3.1 Risk Process 5 3.2 Marketing Process 5 3.3 Limitations of the Current Approach 6 Section 4 Mosaic: A Core Enabler of Risk Adjusted Marketing 7 4.1 Mosaic 7 4.2 DataPlus 8 4.3 Comprehensive Credit Reporting (CCR) 8 4.4 Bringing it Together: Credit Risk Rating and Mosaic 9 Section 5 Experian’s Vision: A Single Customer View 12 13 5.1 Risk Adjusted Customer View Database in Practice Section 6References 14 Section 7 About the Author 15 Section 8 About Experian 16 Risk Adjusted Marketing Section 1 Risk Adjusted Return (RAR) Risk Adjusted Return (RAR) or Risk Adjusted Return on Capital (RAROC) are common and widely understood concepts in the financial services industry. At a basic level, the risk an organisation takes on is balanced against potential reward in writing a loan or issuing an insurance policy. The RAROC metric is usually defined as RAROC = (Expected Return)/(Economic Capital) or RAROC = (Expected Return)/(Value at Risk) Economic capital is the buffer set aside to cover unexpected losses, ensuring an organisation can survive shocks to the financial system. Figure 1: Loss Distribution Curve Economic capital is made up of market risk, credit risk and operational risk. For banks in particular, Basel II has led to a more rigorous definition and estimation of these components using mathematical and statistical models. As the Global Financial Crisis has shown, economic capital is often not an adequate buffer for extreme financial shocks, increasingly referred to as ‘Black Swan’ events. Extreme financial shocks cannot be predicted, and often result in financial services organisations defaulting. Capital is one of the most important assets for a financial services organisation. Responsible management ensures capital is allocated to maximise shareholder return, taking into account the risk profile of different exposures and asset classes. RAROC is a key metric in the capital allocation process. Probability of loss Priced into the product (risk-based pricing) Risk based pricing is an example of RAROC at a micro level. Sophisticated organisations are able to price for risk, for example adjust interest rate premiums or discounts, based on the customer’s risk profile and product being applied for. Covered by capital reserves (economic capital) Bank default Expected (EL) 3 Risk Adjusted Marketing Unexpected (UL) Amount of loss Section 2 Introducing the Concept of Risk Adjusted Marketing The previous section discussed RAROC as a method to optimise capital allocation by aligning potential return with the risk involved. In a similar way, Risk Adjusted Marketing (RAM) is a method to improve the success of marketing strategies by more actively considering the risk dimension in the process, aligned more to the customer rather than the product. Risk Adjusted Marketing builds on the idea of ’right person; right message; right channel; right time’ by bringing into play valuable insight from internal and external data sources to give a wider view of the customer. For financial services companies, this may be credit risk. For telecommunications companies, this may be payment history, and for insurance companies this may be claims record. Risk Adjusted Marketing places the risk dimension much more to the fore in the marketing mix and process. 4 Risk Adjusted Marketing More importantly, Risk Adjusted Marketing: Views customers holistically, instead of through separate product or marketing silos. Helps bridge the perennial divide between competing drivers of marketing (volume and market share) and risk (quality and profitability). This white paper will focus on Risk Adjusted Marketing in the financial services sector, specifically on credit risk and marketing for consumer products in retail banking. The concepts discussed are easily extended to other vertical markets such as insurance and telecommunications. Section 3 Risk and Marketing Processes in Banks Today 3.1 Risk Process Figure 2: The Virtuous Loop The vast majority of banks run their risk and marketing decisions as separate, sequential processes. Risk decisions support marketing activities, are very product-centric, and not fully integrated with marketing activities. The analytics that underpin these activities are typically product rather than customer driven. The typical product risk sequence looks like this: Test Define Execute The broad framework of a bank’s risk appetite and policy is generated, cascading down from the Board Level Risk Committee, taking into account a variety of factors such as Group level regulatory requirements. In the Australian market, regulatory requirements include Basel II, governed by APRA, and Responsible Lending, governed by ASIC. Portfolio and product level risk policy is generated, taking into account factors such as: • Product specific regulatory requirements • Current and future product profitability • P roduct risk and reward trade-offs, for example Credit Cards are high risk, high reward products • RAROC • Current and future bad debt • G eneral product drivers such as acquisition costs, ongoing account management costs, fees, attrition, collection costs • Stress testing Product risk framework parameters are deployed operationally through decision engines such as Experian’s PowerCurve Platform for acquisition and customer management. 5 Improve Monitor 3.2 Marketing Process The typical marketing process looks like this: Marketing analysts, typically working within the product function, create their marketing universe, a marketing view of the bank’s customer base. The marketing universe may already exclude customers with particular risk criteria, such as a high or not eligible risk rating. Either way, once marketing models and risk exclusions are applied to the universe, the risk team will typically review the outcome before the campaign is activated. Marketing campaign is activated and results tracked. In some cases, marketing results are captured and used to refine future targeting models, similar to the loop shown above. Execution results, such as risk scores, terms of business, final decision, limits assigned, are stored to a risk database, which may be product specific or shared across multiple products. I t is worthwhile noting that the need to bring the risk dimension much more into marketing campaigns comes into sharper focus when risk and collections areas are dealing with down stream effects of increased bad-debt. This is often caused by poor customer targeting in the first place and/or poor decisioning at the point of origination. Information stored in the database is analysed and informs changes to risk appetite and policy, starting the sequence again and closing the virtuous loop. An element of the ‘ready, fire, aim’ approach to marketing often contributes to these types of issues. Risk Adjusted Marketing Section 3 3.3 Limitations of the Current Approach Business challenges posed by the siloed risk and marketing processes in the previous section encompass these main areas: 1 No single version of the truth Risk and marketing analytics do not have a common language. Data and business definitions are often different, for example, how to define a customer and how to calculate revenue or profit per customer. Data views do not align with each other. Joined-up decision making at customer level is not possible. 2 Disconnects between risk and marketing models Risk models, and risk-reward models, do not typically incorporate any marketing insights. For example, if propensity to purchase insight is missing from risk and product design processes, marketers will be left with a sub-optimal marketing universe. It is difficult or impossible to systematically identify areas of missed marketing opportunity or wasted analytical effort. 3Sequential decisioning processes hinder optimising customer value In the sequential process, a relatively immaterial variable in the risk analysis may have the effect of excluding a highly profitable segment of customers from a marketing perspective. This is because the risk analysis will implement discretionary exclusions before the marketing analysis begins. The risk and opportunity analysis is not viewed side by side at this critical stage, meaning that relative strengths and potential synergies are not exploited. 6 Risk Adjusted Marketing 4 Time to market Time to market for a new campaign or new product can take up to three months because of fragmented data views and the lack of joined up workflow. An increasingly competitive market, in combination with increasing regulatory, political and consumer pressure, requires the flexibility to significantly reduce time to market to weeks or days. 5 Resource efficiency Banks require expensive, hard to find high end analytical resources and tools for all steps, because all stages of the process require complex data manipulation and analysis. Section 4 Mosaic: A Core Enabler of Risk Adjusted Marketing Experian’s ultimate vision for a more customer-centric and integrated application of analytics to risk and marketing decisions in the retail banking sector is dependent on a single customer view database. This concept will be developed later on in this white paper. As a step along the way, Mosaic is a key enabler of Risk Adjusted Marketing, using existing analytical techniques and tools. Section 3.1 outlined the typical product-centric risk process, which can be categorised as a top-down approach, cascading from a bank’s macro risk appetite and policy framework. Mosaic helps banks move to a more bottom-up approach, where the customer view becomes more central to risk and marketing processes. 4.1 Mosaic Mosaic1 is a geo-demographic profiling tool that uses aggregated consumer data to provide highly predictive insight of the Australian population. Mosaic categorises the Australian population into 11 ‘Groups’ and 47 ‘Types’ (finer classifications within a Group). For example, Group C is Young Ambition – Educated and high-earning young singles and sharers in the inner suburbs. Figure 3: Group C There are three Types within Group C: C09 Bright Futures – Thriving students or professionals renting flats and terraces. C10 Graduating Upwards – Young high-earning socialites in high-rise apartments, often close to water. C11 Rising Wealth – Educated and affluent young professional couples in inner city areas. Each Mosaic Group and Type comprises a demographic summary, expressed through a number of categories: People and Skills – information spanning household age, relationships and education. Living Space – information spanning housing type, tenure, property values and size. Balancing the Books – information spanning household incomes, rental and loan costs. Lifestyle and Attitudes – information spanning favourite hobbies and activities, media consumption, social attitudes. A Day in Their Life – A sample portrayal of everyday tasks that brings the classification to life. Each category has granular attributes, showing how these compare against Australian population averages, generating valuable customer insight which can inform marketing campaigns e.g. locations to target or communication medium to use. 1 P acific Micromarketing Mosaic Australia is an innovative geo-demographic profiling tool that uses aggregated consumer data to provide highly predictive analysis of the Australian population. Mosaic is used by businesses to help them understand consumer trends and behaviours across Australian neighbourhoods. Mosaic does not use personal information to provide details about individuals or their addresses. The underlying data used to build Mosaic is privacy compliant. 7 Risk Adjusted Marketing Section 4 4.2 DataPlus 4.3 Comprehensive Credit Reporting (CCR) Mosaic classifications can be enriched further with other Australian geo-demographic information, providing an additional ‘outside looking in’ customer view. In an ideal world, the introduction of Comprehensive Credit Reporting would provide a complete credit risk view of the customer, allowing for more effective Risk Adjusted Marketing campaigns. DataPlus2 elements include: Change of Address Household Identification Number Census Collection District (CCD) Micro Segment Affluence Household Income Length of Residence Relations Under the proposed Australian CCR legislation, use of expanded shared credit information is not allowed for direct marketing. The CCR legislation allows pre-screening for direct marketing, although the provisions are so restrictive the use of such information may limit the value to a credit provider. Despite these restrictions, it will be interesting to observe how organisations use the expanded data for pre-screening, and whether the business benefits, however potentially small, are nevertheless still worthwhile. As a word of caution, the proposed legislation has extremely punitive sanctions for organisations that breach the direct marketing and pre-screening provisions. The potential commercial and reputational damage is very significant. Age Life stage Adults at Address Gender at Address Children at Address Mosaic and DataPlus elements can be attached automatically at the point of origination using the Experian QAS suite of products. Enriched data elements are appended by matching against the Postal Address File. Many Experian Decision Analytics clients use QAS solutions at origination, although most do not append Mosaic or DataPlus. Where Mosaic is used, it is generally exclusive to marketing, with no link to back-end credit risk systems and databases. 2 Pacific Micromarketing Ltd supply the data for all the DataPlus sets apart from Australia Barcode Sort Plan Number, Australia Change of Address and Customer Barcode. 8 Risk Adjusted Marketing Section 4 4.4 Bringing it Together: Credit Risk Rating and Mosaic Most sophisticated banks have customer credit scoring models which in turn map into customer risk grades. Customer scoring models generate a relative risk ranking i.e. how risky is the customer compared to all other customers in the portfolio? Figure 6: Mosaic Segment B08 Professional Knowledge A verage propensity score Customer scoring models take into account behavioural patterns e.g. repayment history across all lending products held by the customer. The models are often supplemented by behavioural information for non-lending products, such as savings accounts or term deposits. A nnual value ($) No. of customers 5000 4000 Organisations without full customer scoring often substitute this with a customer risk grade driven from Basel II loss metrics (Probability of Default, Exposure at Default and Loss Given Default). 3000 2000 1000 Improved data infrastructure is a significant by-product of banks’ investments in Basel II compliance. No. of customers 0 Within the credit risk function, most banks have sophisticated data warehouses, capturing rich customer transactional and behavioural data. In the absence of an integrated, common, customer-centric, credit risk and marketing database, Mosaic and DataPlus elements can be retrospectively appended to each customer record to provide an enriched, external view of the customer. Customer Mosaic Risk Grade Other C0344897 B08 16 Transactor This complete customer profile provides a rich and powerful risk adjusted view, which supports more informed and intelligent marketing strategies through segmentation analysis and predictive modelling. Importantly, customer risk is factored in before a marketing campaign is launched, helping to break down one aspect of the typical sequential, siloed process discussed in Section 3 of this white paper. Risk Adjusted Marketing isk hr hig k k ris ris gh Hi ium d Me w Lo Ave. propensity score k ris ry Ve low k ris Recommended steps in the process are: 1 Profile customer base on Mosaic Figure 5: Mosaic Profile 9 ry Ve Annual value ($) 2 Mosaic profile analysis Customer analysis Product portfolio analysis Product channel analysis 3 4 5 Review customer management relationship, performance Embed Mosaic segmentation into customer management process Further application, eg. scorecards, optimisation, etc. Step 1 Append Mosaic and DataPlus elements to every customer record. Step 2 Understand and analyse the customer base with respect to Mosaic segment, customer risk grade, and any other combination of segmentation variables that will drive the marketing campaign. Section 4 Figure 7: Sample Customer Population Profile by Mosaic Segment Analyse each Mosaic segment to help answer the following typical business and marketing questions: Figure 8: Mosaic Population Distribution for Revolvers and Transactors in a Credit Card Portfolio Is the Mosaic group under or over-represented in the customer base? Who are the most profitable customers? What is the customer risk profile? What is their propensity to respond or purchase? What is the typical product mix of customers in this segment, and what opportunities for up-sell or cross-sell does this present? Do I want to market to these customers, and if so, what is the best communication channel? Should I bother marketing to these customers if their profile is associated with high risk and I am unlikely to approve any new credit applications? How can I be smarter in meeting my Responsible Lending obligations, by factoring in customer risk in my marketing campaign? Which Mosaic segments do I want to match against the prospect universe to actively market to? Standard analytical techniques (regression analysis, cluster analysis etc.) in combination with Experian Decision Analytics and Experian Marketing Analytics toolkits can be used to perform analysis to help answer these questions. Mosaic D & E: Revolving credit Mosaic A, B & C: Transactor For example, Figure 8 is an example of segmentation analysis for a Credit Card portfolio, using Mosaic as a key segmentation variable. The entire customer base was categorised by ‘active’ card holders, for example, customers who have had a transaction in excess of $100 in any of the last three months. These customers were then split by their utilisation behaviour, namely Revolver or Transactor: • Revolvers pay their minimum balance each month, are extremely profitable (due to interest paid) and a higher credit risk. • T ransactors pay their balance in full each month, are not very profitable and a lower credit risk. 10 Risk Adjusted Marketing Section 4 For the Revolver vs Transactor segments, the diagram shows how each Mosaic code is represented in the ‘active’ card population relative to the overall population average. Overlaying the credit risk dimension, this information can inform a more intelligent, risk adjusted, customer focused marketing campaign. Steps 3, 4 and 5 Analysis created in Step 2 for marketing will also create complementary insights for ongoing credit risk management. To close the loop, these can be deployed operationally where Mosaic is available in a production environment. Existing credit risk strategies for origination and customer management can be refined, taking into account the Mosaic profile. These strategies are easily deployed using a decision engine like Experian Decision Analytics Strategy Management Generation 3. Figure 9: Mosaic Strategy Management Generation 3 11 Risk Adjusted Marketing Mosaic also opens up other analytical opportunities to better manage credit risk in the portfolio. In the wake of the Global Financial Crisis, Experian Business Strategies have improved the ability to forecast portfolio losses using Mosaic as a key portfolio segmentation variable. In summary, different Mosaic profiles respond differently to macro-economic shocks, improving the accuracy of forward-looking loss forecasting and stress testing models. Section 5 Experian’s Vision: A Single Customer View Experian’s vision for a more customer-centric view of analytics to drive marketing and risk strategies is built on a single customer view database. Financial institutions hold many separate databases and can find it hard to achieve a single customer view. For example, an individual may hold a credit card, transaction account and loan or car and household insurance. An effective way of creating a single customer view is to utilise tools that: First standardise customer details against a known source of data; Identify like records through phonetic and other sophisticated matching based on defined criteria; and Finally execute data integration through database technologies and applied business rules. Experian provides solutions which can bring an integrated approach to this single customer view creation process. These solutions can validate and standardise data, like customer address, against a known source (typically the Postal Address File), and match records across databases and enhance data with relevant additional profiling information. There are a number of major benefits of adding the validation and standardisation step to the customer data management strategy, including: Accuracy of data Standardisation of data Ability to append a unique identifier, which ultimately assists with matching and de-duplication required to create a single customer view Correct Mosaic code appended The previous section touched on Mosaic as a bridging step to introduce a wider risk adjusted customer view to marketing campaigns. Mosaic remains a key analytical element of the single customer view database and inaccurate data can cause issues. 12 Risk Adjusted Marketing For example, if a customer or prospect believes they live in Richmond but in fact they reside in a neighbouring suburb, say Burnley or Cremorne, this could result in the wrong Mosaic profile being applied to the customer and in-turn an incorrect Risk Adjusted Marketing strategy applied. Ultimately, Experian’s single customer view database, which we can call a Risk Adjusted Customer View Database: Is a solid foundation to address limitations of the typically disjoint and sequential risk and marketing processes. Helps align risk and marketing strategies to the customer rather than the product. Key benefits of the integrated database include: Data views aligned with each other, allowing risk and marketing analytics to define data in the same way where possible, and differently where the two domains require it. Reduced data latency. Enabling joined-up decision making at customer level, as opposed to the current sequential process. Improved speed to market, as data views are no longer fragmented and processes between risk and marketing are joined-up. More efficient use of expensive, high-end analytical resources. Section 5 5.1 Risk Adjusted Customer View Database in Practice The following steps articulate how the Risk Adjusted Customer View database would work in practice, supporting an integrated, risk adjusted customer view to drive marketing campaigns. 13 1 3 Apply mandatory regulatory constraints to the database, for example exclude customers under 18, or apply rules to help meet Responsible Lending requirements. Factor in customer risk profiles and Mosaic so that risk adjusted models generate the marketing universe for individual campaigns. The marketing universe can be for existing customers, or to profile against a prospect database to better target new customers. 2 4 Use risk and marketing models for business line or product applied to entire customer universe, both generated using the wide set of common data in the database. Feed campaign history back into the risk adjusted models for regular review and refinement of analytical risk and marketing models and governance frameworks e.g. organisational risk appetite. Risk Adjusted Marketing Section 6 References 1 Mosaic 2 DataPlus Pacific Micromarketing Mosaic Australia is an innovative geo-demographic profiling tool that uses aggregated consumer data to provide highly predictive analysis of the Australian population. Mosaic is used by businesses to help them understand consumer trends and behaviours across Australian neighbourhoods. Pacific Micromarketing Ltd supply the data for all the DataPlus sets apart from Australia Barcode Sort Plan Number, Australia Change of Address and Customer Barcode. Mosaic does not use personal information to provide details about individuals or their addresses. The underlying data used to build to Mosaic is privacy compliant. For more information about Mosaic and Pacific Micromarketing visit www.mosaicaustralia.com.au and www.pacmicro.com.au 14 Risk Adjusted Marketing For more information visit the Pacific Micromarketing website at: www.pacmicro.com.au Section 7 About the Author Jean Abraham Business Consultant, Experian Decision Analytics Jean has worked for Experian Decision Analytics for 13 years, initially from 1998 to 2005, and rejoining in 2006. The year in between was spent at Group Risk at ANZ. In his first 7 years with Experian, his main areas of focus were Analytics, Portfolio Monitoring and Basel II. Since returning to Experian, he has worked on Strategy Manager design for customer acquisition, Strategy Simulation and Strategy Tree Optimisation. His most recent consulting engagements have focused on impacts of the introduction of comprehensive credit reporting in the Australian marketplace. Jean has worked for an extensive number of Tier 1 financial services clients in the Asia/Pacific region and is currently a Business Consultant in Experian’s Customer Analytics and Consultancy Team. Author Acknowledgements Thank you to my Experian Decision Analytics and Marketing Services colleagues for their ideas and input to this white paper: Dave Audley Jerry Ying Michael Morris Manu Panda Oliver Moore Simon Trilsbach 15 Risk Adjusted Marketing Jean has been involved in the delivery of major projects. These include Basel II modelling and design of application and behavioural credit risk management decision solutions that enable Basel II compliance, design and implementation of Strategy Manager for the Mortgage portfolio of a major regional bank, and introducing automated decisioning tools into a previously manual SME environment. About Experian Experian is the leading global information services company, providing data and analytical tools to clients around the world. The Group helps businesses to manage credit risk, prevent fraud, target marketing offers and automate decision making. Experian also helps individuals to check their credit report and credit score, and protect against identity theft. Experian plc is listed on the London Stock Exchange (EXPN) and is a constituent of the FTSE 100 index. Total revenue for the year ended 31 March 2012 was US$4.5 billion. Experian employs approximately 17,000 people in 44 countries and has its corporate headquarters in Dublin, Ireland, with operational headquarters in Nottingham, UK; California, US; and São Paulo, Brazil. To learn more about how Experian can help improve the success of your marketing strategies by integrating a Risk Adjusted Marketing approach email [email protected] or call +61 (03) 8699 0100 16 Risk Adjusted Marketing Experian Australia Level 6, 580 St Kilda Road, Melbourne, VIC, 3004 T+61 (03) 8699 0100 F +61 (03) 9600 4676 [email protected] www.experian.com.au