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Generalized Linear Models CAGNY

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e.g. Probability someone takes Friday off, given it's sunny and 70 ... Software: SAS, GLIM, SPLUS, EMBLEM, GENSTAT, MATLAB, STATA, SPSS ... – PowerPoint PPT presentation

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Title: Generalized Linear Models CAGNY


1
Generalized Linear ModelsCAGNY
  • Wednesday, November 28, 2001

Keith D. Holler Ph.D., FCAS, ASA, ARM, MAAA
2
High Level
Given Characteristics
  • e.g. Eye Color
  • Age
  • Weight
  • Coffee Size

Predict Response e.g. Probability someone takes
Friday off, given its sunny and 70 e.g.
Expected amount spent on lunch
3
Personal auto or H.O. class plansDeductible or
ILF severity models Liability non-economic claim
settlement amountHurricane damage curves
Direct mail response and conversionPolicyholder
retentionWC transition from M.O. to L.T.Auto
physical damage total loss identificationClaim
disposal probabilities
Insurance Examples
Logistic Regression
4

Example Personal Auto
Log (Loss Cost) Intercept Driver
Car Age Size Factor i
Factor j
Parameters
e.g. Young Driver, Large Car Loss Cost exp
(6.50 .75 0) 1,408
5
Technical Bits
  • Exponential families gamma, poisson, normal,
    binomial
  • Fit parameters via maximum likelihood
  • Solve MLE by IRLS or Newton-Raphson
  • Link Function (e.g. Log Loss Cost)
  • 1-1 function
  • Range Predicted Variable ? ( -? , ? )
  • LN ? multiplicative model, id ? additive model
    logit ? binomial model (yes/no)
  • Different means, same scale

6
Personal Auto Class Plan Issues
  • Territories or other many level variables
  • Deductibles and Limits
  • Loss Development
  • Trend
  • Frequency, Severity or Pure Premium
  • Exposure
  • Model Selection penalized likelihood an option

7
Why GLMS?
  • Multivariate adjusts for presence of other
    variables. No overlap.
  • For non-normal data, GLMS better than OLS.
  • Preprogrammed easy to run, flexible model
    structures.
  • Maximum likelihood allows testing importance of
    variables.
  • Linear structure allows balance between amount of
    data and number of variables.

8
Software and References
Software SAS, GLIM, SPLUS, EMBLEM, GENSTAT,
MATLAB, STATA, SPSS References Part 9 paper
bibliography Greg Taylor (Recent
Astin) Stephen Mildenhall (1999) Hosmer and
Lemeshow Farrokh Guiahi (June 2000) Karl P.
Murphy (Winter 2000)
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