400 likes | 414 Views
Join the COTOR Training Session II as experts discuss long tails, volatility, and data transforms in GL data. Learn about assumptions, verification, descriptive statistics, regression diagnostics, and more.
E N D
COTOR Training Session II GL Data: Long Tails, Volatility, Data Transforms September 11, 2006
COTOR Session II Presenters Doug Ryan MBA Actuaries, Inc. Phil Heckman Heckman Actuarial Consulting
Assumptions and Verification • Behavior of mean, variance, distribution (sometimes) • Verify by examining • Descriptive statistics • Regression diagnostics • Scatter plots • Residual plots
What are they? • Slope standard error • R square: Percentage of variance explained by regression • Intercept standard error • Degrees of Freedom: # Observations - # Parameters
A Key Diagnostic: Standard Residual • Standardize by subtracting mean (should be zero) and divide by standard deviation • A z-score • Z = (x – mean)/sd
Two Factor Model • One factor model: incremental loss =f(prior cumulative) • Compute separate function for each development age • Can use Excel regression functions • Two factor model: incremental loss = f(accident period, development age) • Bornhuetter-Ferguson is an example • Nonlinear function, Use solver
Why use logarithms? • Descriptive statistics indicate data not normal • A-priori belief that model is mutiplicative • Residuals increase with value of dependent variable
Iterative Least Squares • Start with all weights = 1 • Estimate by minimizing weighted sum of squares • Calculate new weights = 1/(1+ Old Weight*Squared Error) • Reëstimate. Stop when weights stop changing.