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Structural Dependence and Stochastic Processes. Don Mango American Re-Insurance 2000 CAS DFA Seminar. Question: What Does This Have To Do With “Assessing Balance Sheet Protection Using DFA” ?. Answer: Plenty ! But you have to wait. Agenda. The Enemy of a Balance Sheet: Dependence
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Structural Dependence and Stochastic Processes Don Mango American Re-Insurance 2000 CAS DFA Seminar
Question:What Does This Have To Do With “Assessing Balance Sheet Protection Using DFA” ?
Agenda • The Enemy of a Balance Sheet: Dependence • Simulating with Correlation • Structural Dependence in Asset and Economic Modeling • Extreme Events
The Nature of (Re)Insurance • Leveraged contracts • Likely outcome: Small (expected) gain • Unlikely outcome: Big Loss • Hopefully accumulated risk loading absorbs “typical” variability • Diversification benefit • Expected slow growth of Capital
The Nature of (Re)Insurance • Leveraged portfolio • In-force Limits are multiples of Capital • Leveraged just like a bank • What kills banks? • Bank runs (don’t see those anymore thanks to FDIC) • Series of capital-destroying defaults • Poor underwriting decisions
The Nature of (Re)Insurance • What kills (re)insurers? • Too many negative contract outcomes in too short a time • Depletes Capital more quickly than it can be replenished by underwriting activities
The Nature of (Re)Insurance • But what is “too short a time” ? • “Companies don’t go out of business in one year” • The enemy is really Dependence between balance sheet elements
Modeling Dependence • We want to make sure we have all the dependencies modeled properly in our DFA models • The most common type of dependence is CORRELATION • Just one of many types of dependence • But it’s our favorite !!
Simulating with Correlation • We think we know how to induce correlation between variables in our simulation algorithms • Two major problems: • Correlation is not the same throughout the simulation space • Known dependency relationships may not be maintained
Correlation Not Always The Same... • Consider a well-known approach for generating correlated random variables • Using Normal Copulas • Similar to the Iman-Conover algorithm (in @Risk) which uses Normal Copulas to generate rank correlation
Normal Copulas • Generate sample from multi-variate Normal with covariance matrix S • Get the CDF value for each point [ these are U(0,1) ] • Invert the U(0,1) points to get target simulated RVs with correlation… • …but what correlation will the target variables have?
Problem • Correlation in the tails is near 0 - extreme values are nearly uncorrelated • Is this your intended result? • Example….
Known Dependencies Not Maintained • Simple example DFA Model for a company • Liabilities: • 4 LOB: Auto, GL, Property, WC • Assets: • Bonds
Example DFA Model • Liabilities: • 4 LOB: Auto, GL, Property, WC • Simulation: correlated uniform (0,1] matrix per time period used to generate the variables • Assets: • Bonds • Simulation: yield curve scenarios
Example DFA Model - PROBLEMS • Liabilities: • Getting dependence within a year, but what about serial dependence across years? • Could expand the correlation matrix to be [ # variables x # years ] • But what about cycles? • What about the magnitude of year-over-year changes?
Example DFA Model - PROBLEMS • Assets: • Including yield curve variation - good thing • What about linkages with liabilities? • Example: inflation will impact severities and yield curve • Naively-built yield curve simulation may actually reduce variability of overall answer !! • Independent asset values will dampen the variability of net income, surplus, etc.
Band Aid? • Problem: Resulting scenarios may not be internally consistent • Possible Improvement: a MEGA-CORRELATION matrix (Yield curves and Liabilities)... • …but still have no guarantee of internal consistency
The Real Problem • No Overarching Conceptual Framework • “All Method, No Model” • Need an explanatory, causative, structural model which builds in known relationships and dependencies • Still has volatility, randomness • But the required internal consistency is built in (within constraints)
The Real Problem • This represents a significant mindset shift in actuarial modeling for DFA • Moves you away from correlation matrices… • …and towards STOCHASTIC PROCESSES... • …prevalent in asset and economic modeling
Stochastic Difference Equations • Focus is on Processes, Increments, and Paths • Processes: Time series • Increments: changes from one time period to the next • Paths: simulated evolution of the time series, calculating interim values, calibrated to starting point
Stochastic Difference Equations • Begin with Driver Variables • Example: Change in Money Supply (M2) and Money Velocity (V2) • Next Level of variables have defined relationship to drivers, plus error terms • Change in GDP = fcn(M2, V2) + sdW • dW = “Wiener” term • N. Wiener of information theory fame • Often a standard normal
Stochastic Difference Equations • Each successive level of variables builds upon prior variables in a “cascade” • Initial conditions need to be calibrated to match current state • Crucial point: future values depend on current value • Conditional distribution
Stochastic Difference Equations • Advantage: internal consistency • Not relying on the dependence matrix • Example: Yield curves • “Stylized facts” (D. Becker) • Should be Arbitrage-free... • …and consistent with economic scenarios • Raises the complexity bar
Economic Model Cascade V2 Growth M2 Growth Inflation GDP Growth Interest Rates (Forward, Spot, Yield) Equity Earnings Yield Equity Earnings Growth Asset Model
Extreme Events • Method of linking impacts • Objects which are a level above the other simulated variables • Directly dictating extreme scenarios • When event “occurs”, override regular simulation of impacted variables • Can still have variability • E.g., event triggers conditional distribution
Extreme Events • Example: $50B EQ in Los Angeles • What should happen? • Property loss (Cat model distribution) • WC cat loss (based on conditional dist.) • Bond liquidation loss (P&C insurers trying to convert to cash at the same time - liquidity crunch) • Non-voluntary assessment (if still solvent !)
Extreme Events • Could simply pad out your cat distribution for these costs • But doesn’t that defeat the purpose of DFA to a large extent? • Loss of detail • Good functionality to build in regardless • Scenario testing is popular
Extreme Value Theory • Presentation here by Embrechts and Patrik • Book by Embrechts et al