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A Comprehensive System for Selecting and Evaluating DFA Model Parameters Chris Madsen, ASA, CFA, MAAA American Re-Insurance Company CAS DFA Forum, Chicago July 19th-20th, 1999 Chris Madsen, ASA, CFA, MAAA American Re-Insurance Company CAS DFA Forum, Chicago July 19th-20th, 1999
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Discussion Overview Overview of a Integrated Risk Management System Focus on an Economic Model Calibration examples Optimization issues Conclusions Overview of a Integrated Risk Management System Focus on an Economic Model Calibration examples Optimization issues Conclusions
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Model Structure
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M2 Growth V2 Growth Inflation* GDP Growth* Interest Rates* (Forward, Spot, Yield) Equity Earnings Yield Equity Earnings Growth Asset Model * Currency Link (not currently modeled) Economic Model
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SimulationDefining the r/i structure Modeling the portfolio Gross loss Net loss Ceded loss Retained premiums Ceded premiums Loss Simulation with DFA Loss data Premiums Customer requirements Limits Prices
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What Makes A Good Scenario Generator? Logically defensible Economic theory Historical data Risk across time Logically defensible Economic theory Historical data Risk across time
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Plausible Paths No negative interest rates Historical data does not necessarily equate expected value of statistics (trend sensitive) - rather, build distributions of statistic and ensure history is well-represented. No negative interest rates Historical data does not necessarily equate expected value of statistics (trend sensitive) - rather, build distributions of statistic and ensure history is well-represented.
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Types of Models Strategic Long-term planning resource allocation (capital, business mix, asset mix, retro covers) Pricing Risk-neutral (replication) Does often generate unreasonable simulations (all returns = risk free rate) Strategic Long-term planning resource allocation (capital, business mix, asset mix, retro covers) Pricing Risk-neutral (replication) Does often generate unreasonable simulations (all returns = risk free rate)
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Economic Model Long interest rates dl t = a l ( l - l t ) dt + l t l dZ l Short interest rates dr t = a r ( r - r t ) dt + r t r dZ r Long interest rates dl t = a l ( l - l t ) dt + l t l dZ l Short interest rates dr t = a r ( r - r t ) dt + r t r dZ r
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Setting Targets Basic statistics (arithmetic mean, compound mean, st.dev., percentiles, min. & max., serial) Plausibility criteria (Becker - yield curve characteristics) Basic statistics (arithmetic mean, compound mean, st.dev., percentiles, min. & max., serial) Plausibility criteria (Becker - yield curve characteristics)
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Target Example History Simulation
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Calibration Example #1 Regressing on ‘74-’98, we get {A, B, C}={0.015, 1.3, - 0.015} R 2 =58% 90% parameter confidence D=1.06 (ln(residual/mean)) Regressing on ‘74-’98, we get {A, B, C}={0.015, 1.3, - 0.015} R 2 =58% 90% parameter confidence D=1.06 (ln(residual/mean))
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Calibration Example #1 {A, B, C, D} = {0.75, 0.5, -0.04, 1.05} The two are quite similar though at first glance… Weight shifted from 30 Year Rate to Inflation Mean reversion up Volatility down slightly {A, B, C, D} = {0.75, 0.5, -0.04, 1.05} The two are quite similar though at first glance… Weight shifted from 30 Year Rate to Inflation Mean reversion up Volatility down slightly
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Calibration Example #2
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Conclusions Regression is a good starting point but may miss key statistics Key statistics may miss fundamental relationships Optimization is a valuable parameterization tool and enables us to monitor key statistics as well as fundamental relationships Regression is a good starting point but may miss key statistics Key statistics may miss fundamental relationships Optimization is a valuable parameterization tool and enables us to monitor key statistics as well as fundamental relationships
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