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Explore the development of state-specific factors affecting catastrophe reserves, assessing advantages and limitations in this analytical approach. Delve into modifying factors based on judgment and historical data, including issues and modifications by line of insurance.
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TAX EXEMPT PRE-EVENT CATASTROPHE RESERVES - IN THE WIND? Factor Development David Fennell Casualty Loss Reserve Seminar September 13, 1999
Outline • Origins of state specific factors • Factors by line of insurance • Modifying factors based on judgement • Advantages and limitations recognized in the analytical approach
Origins of State Specific Factors • New York Dept of Ins factors: • Premium multipliers by state • Based on PCS data from 1950 to 1996 • Trended for Construction Cost Indices and Population Growth • Annual Reserve increment $2 Billion
Line Of Insurance Issues • Historical cat data not collected by line of insurance • $2 Billion funds some but not all cats • $3.2 Bil annual average cost since 1950 • $4.2 Bil annual average cost since 1967
LINE OF INSURANCE ISSUES South Carolina • Used A.M. Best data by state and line of insurance • Available from 1967 • Use statistical properties to separate catastrophic losses from typical losses • Cat loss is loss in excess of mean plus X * Std dev
LINE OF INSURANCE ISSUES South Dakota • For states with less severe catastrophic history, the method could not work as well • Low credibility for some state/line of insurance combinations • Some data cleansing necessary
Judgement Modifications • Factors based only on historical averages may be high or low depending on recent history of major cats in a state • South Carolina hurricane • New Madrid earthquake • Probabilistic modeling provided an alternative which could inform judgement • Multiple vendors solicited for modeling indications • Team analyzed six sets of modeling indications to supplement historical losses
Issues With Judgement Modifications • Some modeling indications were for commercial versus personal lines risks. • Line of insurance had to be inferred afterward. • Models treat different perils differently • Tornado/hail separate from hurricane • Some modelers did not include indications for all states • Varying composition of model output
Scatter • The tool used for comparing methods was the scatter chart.
Regression Line • The agreement between methods was measured by the regression line.
Residual Plot • Residual plots from the regression detected outliers
Weighted Regression • Weights for each method were derived by team consensus based on perceived similarity of the alternative to our reserve approach.
Outliers • States more than than two standard deviations from zero were considered candidates for modification.
Wind Factors Modified • Homeowners factors modified by judgement for CO, HI, KS, NE, OK • CMP factors modified for FL, HI, NV • Allied Lines factors modified for AL, DE, FL, HI
Earthquake Factors Modified • Considerations for modification given to 12 states: • AK, AR, IL, IN, KY, MO, MS, OH, SC, TN, UT, WA • Earthquake history for these 12 states was lacking • Regression approach had to be adapted due to lack of ability to fit a meaningful regression line • Assumed that California had credible history and forced regression line through it
Conclusions • Factors were built considering • Exposure: Cost and population indices • Funding: Best allocation of a fixed reserve increment amount • Frequency: Both modeled and historical • Severity: Historical excess losses and model simulations • Credibility: Adjustments made in some premium line of insurance combinations • Data quality: Investigations uncovering data anomalies led to some factor revisions