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Stochastic Mortality, Macroeconomic Risks, and Life Insurer Solvency Katja Hanewald a,b,c , Thomas Post a,b,c , and Helmut Gründl a,b,c a Humboldt-Universität zu Berlin b Collaborative Research Center 649: Economic Risk c CASE - Center for Applied Statistics and Economics. Motivation.
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Stochastic Mortality, Macroeconomic Risks, and Life Insurer Solvency Katja Hanewalda,b,c, Thomas Posta,b,c, and Helmut Gründla,b,c a Humboldt-Universität zu Berlin b Collaborative Research Center 649: Economic Risk c CASE - Center for Applied Statistics and Economics
Motivation • Systematic deviations of actual mortality rates from assumed ones: threat to the financial stability of life insurers • Recent demographic study (Hanewald, 2009): Lee-Carter mortality index is significantly correlated with macroeconomic changes • Idea: Assess the overall impact of macroeconomic fluctuations on the financial stability of a life insurance company
Preview of Results • Insolvency probabilities are considerably higher when dependencies between the mortality index ktand economic variables are taken into account • This result is robust to variations in: • the age of the insureds • the insurance portfolio size • the amount of equity capital • the asset allocation
Contents • Literature Review • The Simulation Framework • Simulation Results • Conclusion
Literature Review • Stochastic mortality modeling • Status quo summarized in Cairns, Blake, and Dowd (2008) • Lee-Carter (1992) model: “The earliest model and still the most popular” • Stochastic mortality in life-insurance portfolios • Dowd, Cairns, and Blake (2006), Hári et al. (2008), and Bauer and Weber (2008): impact of stochastic mortality on an insurer’s risk exposure • Gründl, Post, and Schulze (2006), Cox and Lin (2007), and Wang et al. (2008): natural hedging opportunities
Literature Review • The impact of macroeconomic changes on mortality • Ruhm (2000): mortality rates in the U.S. fluctuate procyclically over the period 1972–1991 • Similar patterns observed for: • U.S., Spain, and Japan (Tapia Granados, 2005a, 2005b, 2008) • Germany (Neumayer, 2004, and Hanewald, 2008) • Sweden (Tapia Granados and Ionides, 2008) • 23 OECD countries, 1960–1997 (Gerdtham and Ruhm, 2006) • Especially: cardiovascular fatalities, influenza/pneunomia deaths (Ruhm, 2004, Tapia Granados, 2008)
Literature Review • Hanewald (2009): “Mortality modeling: Lee-Carter and the macroeconomy” • Relationship between the Lee-Carter mortality index kt and changes in real GDP or unemployment rates • Six OECD countries, 1950–2005 • Results • Dkt significantly correlated with macroeconomic changes in Australia, Canada, Japan, and the United States • Structural change in that relationship at the beginning of the 1990s
The Simulation Framework • Correlations between Dkt andreal GDP growth, United States Early 1970s: Dramatic decline in CVD mortality 1990s: Reduced mortality from tobacco and alcohol consumption, motor vehicle crashes, influenza and pneumonia Note: * P < 0.05,+P < 0.1 Ongoing: Substantial increase in deaths attributable to poor diet and lack of physical activity
Contents • Literature Review • The Simulation Framework • Simulation Results • Conclusion
Model misspecification risk The Simulation Framework • Goal: Assess the overall impact of macroeconomic fluctuations on a life insurer’s solvency situation • Stochastic dynamic asset-liability model • Both sides of the balance sheet react to macroeconomic changes • Target variable: Multi-period insolvency probability • Compare two versions of the model • Reduced correlation structure • Full correlation structure
The Simulation Framework • Newly founded life insurance company • Writes I0 term-life contracts in t = 0 • Annual premium P • Death benefit B • Contract duration T • All insureds are of age x • Fixed proportion g of first year’s premium income raised as equity capital E0
The Simulation Framework • Two lognormally-distributed investment opportunities • Stocks and bonds • Annually rebalanced asset portfolio • a [0, 1] constant fraction of assets invested in stocks • Fixed dividend ratio d • Claims and reserves calculated based on the realized mortality index
The Simulation Framework • Mortality rates • Lee and Carter (1992): mx, t = exp(ax + bx ∙ kt) • Stochastic drivers of the model • Real GDP Dln(real GDPt) = mGDP + sGDP ∙eGDP, t • Stock returns rs, t = ms + ss ∙es, t • Bond returns rb, t = mb + sb ∙eb, t • Mortality index Dkt= + sk ∙ek, t • Account for correlation structure between eGDP, t, es, t, eb, t,and ek, t
The Simulation Framework • Calibration to empirical data • United States • 1989-2005 (Hanewald, 2009) • Data sources • Real GDP:U.S. Bureau of Economic Analysis • Stock/bond returns: Morningstar (2008) • Mortality rates: Human Mortality Database
The Simulation Framework • Estimated parameters of stochastic processes
Contents • Literature Review • The Simulation Framework • Simulation Results • Conclusion
Simulation Results • Base scenario: term-life insurance, T = 10 years, B = $100,000, I0 = 10,000, males, age = 40 in t = 0 Ignoring correlations between kt and economic variables underestimation of insolvency probabilities
Simulation Results Increase in insolvency probabilities from switching to the full correlation scenario depends on bx • Vary initial age x
= + 0.015 = + 10.5% = + 0.016 = + 53.1% Simulation Results • Vary size I0 of the insurance portfolio Underestimation risk more severe for larger portfolios
Simulation Results The relative increase in risk is larger for higher initial amounts of equity capital. • Vary initial amount of equity E0
Simulation Results Larger fraction of stocks induces higher exposure to unfavorable dependency between assets and liabilities • Vary stock proportion a
Contents • Literature Review • The Simulation Framework • Simulation Results • Conclusion
Conclusion • Ignoring the existing dependency structure between mortality rates and macroeconomic changes leads the insurer to systematically underestimate true insolvency probabilities • The relative increase in insolvency probability is higher for insurers with: • relatively mature insureds • large portfolios • a high stock exposure • a high amount of equity capital
Conclusion • The interaction between mortality and macroeconomic conditions needs to be an integral part of • life insurers’ internal risk models • capital allocation decision making • of solvency assessment by rating agencies and regulatory authorities • This will lead to • more accurate assessments of an insurer’s risk situation • more effective protection of policyholders’ interests