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Practical GLM Modeling of Deductibles

Practical GLM Modeling of Deductibles. David Cummings State Farm Insurance Companies. Overview. Traditional Deductible Analyses GLM Approaches to Deductibles Tests on simulated data. Empirical Method. All losses at $500 deductible $1,000,000 Losses eliminated by

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Practical GLM Modeling of Deductibles

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  1. Practical GLM Modelingof Deductibles David Cummings State Farm Insurance Companies

  2. Overview • Traditional Deductible Analyses • GLM Approaches to Deductibles • Tests on simulated data

  3. Empirical Method All losses at $500 deductible $1,000,000 Losses eliminated by $1000 deductible $ 100,000 Loss Elimination Ratio 10%

  4. Empirical Method • Pros • Simple • Cons • Need credible data at low deductible • No $1000 deductible data is used to price the $1000 deductible

  5. Loss Distribution Method • Fit a severity distribution to data

  6. Loss Distribution Method • Fit a severity distribution to data • Calculate expected value of truncated distribution

  7. Loss Distribution Method • Pros • Provides framework to relate data at different deductibles • Direct calculation for any deductible • Cons • Need to reflect other rating factors • Framework may be too rigid

  8. Complications • Deductible truncation is not clean • “Pseudo-deductible” effect • Due to claims awareness/self-selection • May be difficult to detect in severity distribution

  9. GLM Modeling Approaches • Fit severity distribution using other rating variables • Use deductible as a variable in severity/frequency models • Use deductible as a variable in pure premium model

  10. GLM Approach 1– Fit Distribution w/ variables • Fit a severity model • Linear predictor relates to untruncated mean • Maximum likelihood estimation adjusted for truncation • Reference: • Guiahi, “Fitting Loss Distributions with Emphasis on Rating Variables”, CAS Winter Forum, 2001

  11. GLM Approach 1– Fit Distribution w/ variables X = untruncated random variable ~ Gamma Y = loss data, net of deductible d

  12. GLM Approach 1– Fit Distribution w/ variables • Pros • Applies GLM within framework • Directly models truncation • Cons • Non-standard GLM application • Difficult to adapt to rate plan • No frequency data used in model

  13. Not a member of Exponential Family of distributions Practical Issues • No standard statistical software • Complicates analysis • Less computationally efficient

  14. Practical Issues • No clear translation into a rate plan • Deductible effect depends on mean • Mean depends on all other variables • Deductible effect varies by other variables

  15. Practical Issues • No use of frequency information • Frequency effects derived from severity fit • Loss of information

  16. GLM Approach 2-- Frequency/Severity Model • Standard GLM approach • Fit separate frequency and severity models • Use deductible as independent variable

  17. GLM Approach 2-- Frequency/Severity Model • Pros • Utilizes standard GLM packages • Incorporates deductible effects on frequency and severity • Allows model forms that fit rate plan • Cons • Potential inconsistency of models • Specification of deductible effects

  18. Test Data • Simulated Data • 1,000,000 policies • 80,000 claims • Risk Characteristics • Amount of Insurance • Deductible • Construction • Alarm System • Gamma Severity Distribution • Poisson Frequency Distribution

  19. Conclusions from Test Data– Frequency/Severity Models • Deductible as categorical variable • Good overall fit • Highly variable estimates for higher or less common deductibles • When amount effect is incorrect, interaction term improves model fit

  20. Severity RelativitiesUsing Categorical Variable

  21. Conclusions from Test Data– Frequency/Severity Models • Deductible as continuous variable • Transformations with best likelihood • Ratio of deductible to coverage amount • Log of deductible • Interaction terms with amount improve model fit • Carefully examine the results for inconsistencies

  22. Frequency Relativities

  23. Severity Relativities

  24. Pure Premium Relativities

  25. GLM Approach 3 – Pure Premium Model • Fit pure premium model using Tweedie distribution • Use deductible as independent variable

  26. GLM Approach 3 – Pure Premium Model • Pros • Incorporates frequency and severity effects simultaneously • Ensures consistency • Analogous to Empirical LER • Cons • Specification of deductible effects

  27. Conclusions from Test Data – Pure Premium Models • Deductible as categorical variable • Good overall fit • Some highly variable estimates • Good fit with some continuous transforms • Can avoid inconsistencies with good choice of transform

  28. Extension of GLM – Dispersion Modeling • Double GLM • Iteratively fit two models • Mean model fit to data • Dispersion model fit to residuals • Reference Smyth, Jørgensen, “Fitting Tweedie’s Compound Poisson Model to Insurance Claims Data: Dispersion Modeling,” ASTIN Bulletin, 32:143-157

  29. Double GLM in Modeling Deductibles • Gamma distribution assumes that variance is proportional to µ2 • Deductible effect on severity • Mean increases • Variance increases more gradually • Double GLM significantly improves model fit on Test Data • More significant than interactions

  30. Pure Premium Relativities Tweedie Model – $500,000 Coverage Amount

  31. Conclusion • Deductible modeling is difficult • Tweedie model with Double GLM seems to be the best approach • Categorical vs. Continuous • Need to compare various models • Interaction terms may be important

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