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Quantifying the Impact of Non-Modeled Catastrophes

Quantifying the Impact of Non-Modeled Catastrophes. David Chernick, FCAS, MAAA Michael Devine, FCAS, MAAA Eric Huls, FCAS CAS Ratemaking Seminar March, 2005. Agenda. Introduction History of Methods Terminology Exposure Base Capping Discussion of Several Alternative Approaches

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Quantifying the Impact of Non-Modeled Catastrophes

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  1. Quantifying the Impact of Non-Modeled Catastrophes David Chernick, FCAS, MAAA Michael Devine, FCAS, MAAA Eric Huls, FCAS CAS Ratemaking Seminar March, 2005

  2. Agenda • Introduction • History of Methods • Terminology • Exposure Base • Capping • Discussion of Several Alternative Approaches • Traditional • Methods Using Cat/AIY – State Based • Methods Using Cat/AIY – Countrywide Based • Total Weather Method • Wrap-up

  3. Introduction • The Panelists • The Data • The Issue

  4. Introduction • The Panelists Introductions Eric Huls Michael Devine David Chernick

  5. Introduction • The Data The base data we are using in this presentation is included in the handouts. Real data Large Catastrophe in 1998 343.2% loss ratio 9.67 Ratio of Cat/AIY

  6. Introduction • The Issue • Operating results • $19.1 Million profit prior to 1998 • $41.4 Million loss in 1998 • Statistics • Mean: • 1998 was 4.3 Standard Deviations from mean.

  7. Introduction • The Issue • A rate should include all costs associated with the transfer of risk. • 20 or 30 or even 40 years of data is not sufficient to properly quantify the tail of the distribution • What is the true prospective average (mean) catastrophe provision?

  8. Introduction • The Issue • Perspective of this presentation is from large insurers without reinsurance coverage. • Reinsurance covering some portion of the catastrophe exposure would most likely be an upper bound of the true mean. • What is the true prospective average (mean) catastrophe provision?

  9. Defining a “Catastrophe”: • Dollar/Claim Count Thresholds: Easy to determine when cat has occurred; Standard method; Static dollar threshold erodes over time due to inflation; Not responsive to different exposure concentrations or growth/decline in exposures; • Percentage of Policyholders Threshold: Avoids inflation issue of static dollar threshold; Requires additional data (exposures) to categorize events; Ignores severity; • Percentage of Days with Highest Frequency Also avoids inflation issue of static dollar threshold; Requires additional data (exposures) to categorize events; Categorization can change over time; Ignores severity;

  10. Additional Terminology • AIY – Amount of Insurance years 1AIY=$1,000 of dwelling coverage • Losses/AIY – Damage Ratios or Cat/AIY

  11. History of Methods

  12. What Base to Relate Catastrophes To? • Premium: Cat provisions impacted by rate changes Trends in non-catastrophe loss & expense dictate cat provision

  13. What Base to Relate Catastrophes To? • Premium: Cat provisions impacted by rate changes Trends in non-catastrophe loss & expense dictate cat provision • Non-Cat Loss/Ex-Wind Loss: Still heavily dictated by trends in Crime, Liability, etc. loss Ex-wind losses can include catastrophic losses

  14. What Base to Relate Catastrophes To? • Premium: Cat provisions impacted by rate changes Trends in non-catastrophe loss & expense dictate cat provision • Non-Cat Loss/Ex-Wind Loss: Still heavily dictated by trends in Crime, Liability, etc. loss Ex-wind losses can include catastrophic losses • AIY or Amount of Insurance Years Definition:$1000 of Building Coverage in force for one year Inflation sensitive Direct measurement of exposure – incorporates policy growth and changes in building costs

  15. Should Individual Catastrophes Be Capped?

  16. Should Individual Catastrophes Be Capped? • Stabilizes provision • Can serve to more appropriately match experience period used with event return periods • Potentially more accurate estimate of expected value results

  17. What Are Some Problems With Capping Individual Catastrophes?

  18. What Are Some Problems With Capping Individual Catastrophes? • What criteria should be used? • The “unthinkable” is happening every year somewhere. • Is the result systematic underestimation of loss costs? • How do we really know appropriate event return periods?

  19. Insurance Services Office (ISO)Excess Wind Procedure Basic Approach • Separate wind & non-wind losses • Examine wind/non-wind ratios • Years where wind/non-wind exceed 1.5 times median are “excess” • Average factor for excess wind • Factor developed for excess wind applied to non-wind, non-excess losses

  20. Insurance Services Office (ISO)Excess Wind Procedure Basic Approach • Separate wind & non-wind losses • Examine wind/non-wind ratios • Years where wind/non-wind exceed 1.5 times median are “excess” • Average factor for excess wind • Factor developed for excess wind applied to non-wind, non-excess losses Characteristics • Straightforward application • Definition of “excess wind” can change as median changes • Assumes stable relationship between wind & non-wind losses • Doesn’t consider variability of wind losses • Doesn’t consider non-wind catastrophes

  21. The Fix ‘Em Up Insurance GroupHomeownersThe State of Mich-con-ota20-Year Average Approach Provision (20-Year Average ) 0.8929

  22. Confidence Interval Approach Step 1 – Establish Company Objective: • Factors include risk tolerance, surplus position/ availability of capital, reinsurance • Determine confidence demands for long-term companywide cat provision • Calculate companywide mean cat/aiy • Calculate standard deviation of mean cat/aiy

  23. Confidence Interval Approach Step 1 – Establish Company Objective (Cont.): • Company has established that it would like to be 90% certain it has an adequate catastrophe provision over the long-term • The following have been calculated from the companywide catastrophe history: Mean Cat/AIY = .3151 Standard Deviation of Mean Cat/AIY = .0372

  24. Confidence Interval Approach Step 1 – Establish Company Objective (Cont.): • The long-run companywide benchmark cat provision is established as follows: Provision (Cat/AIY) = Mean + (t) x (Standard Deviation) = .3151 + (1.323) x (.0372) = .3643 Where : Mean = average cat/aiy companywide 1.323 = t – stat for 90% and (N-1) degrees of freedom .0372 = standard deviation of the mean

  25. Confidence Interval Approach Step 2 – Establish State Level Objective: • Goal period becomes interval rates are in effect • Need to be reasonably certain provision is adequate • Desire to use cap on individual cats to limit volatility • Largest 5% of companywide cats exceeded .65/AIY • Establish required confidence for state capped average

  26. Non-Hurricane Catastrophe Provisions

  27. Confidence Interval Approach Step 2 – Establish State Level Objective (Cont.): • It’s determined that 65% confidence is required • Calculate state mean cat/aiy (capped) • Calculate state standard deviation of cat/aiy (capped)

  28. Confidence Interval Approach Step 3 – Calculate State Provision: • The following was calculated from the capped state level catastrophe history: Mean Cat/AIY = .3912 Standard Deviation of Cat/AIY = .5450 • The short-run state cat provision is established as follows: Provision (Cat/AIY) = Mean + (t) x (standard deviation) = (.3912) + (.389) x (.5450) = .6032 Where: Mean = average capped cat/aiy for Mich-con-ota .389 = t – stat for 65% and (N-1) degrees of freedom .5450 = standard deviation of the annual capped cat/aiy

  29. The Fix ‘Em Up Insurance GroupHomeownersThe State of Mich-con-otaConfidence Interval Approach Provision (Confidence Interval Approach) 0.6032

  30. Issues With Confidence Interval Approach Pluses • Recognizes individual state variability • Stable provision • Provides means to assure companywide sufficiency

  31. Issues With Confidence Interval Approach Pluses • Recognizes individual state variability • Stable provision • Provides means to assure companywide sufficiency Drawbacks • Not particularly responsive to distributional changes, coverage changes, etc. (data back to 1971) • Capping can result in less responsiveness • Recognition of variability interpreted as risk margin

  32. The Fix ‘Em Up Insurance GroupHomeownersThe State of Mich-con-otaExtreme Events Adjustment 20 Year Average 0.0871 0.4576 Provision (Extreme plus Non-Extreme) 0.5446

  33. Extreme Events Adjustment Pluses • Relatively stable • As opposed to censoring, reflects events fully Drawbacks • Accurate determination of event return period difficult • Can be viewed as arbitrary and difficult to explain

  34. 95% / 5% Trended Approach: Methodology: • All years used • Exponential smoothing • Trend factor applied – recognizes static cat definition • 10% annual cap to change in provision

  35. The Fix ‘Em Up Insurance GroupHomeownersThe State of Mich-con-ota95/5 Trended Provision (95/5 Trended) 0.4002

  36. 95% / 5% Trended Approach: Advantages: • Not volatile, yet responsive for non-extreme events • Simple to understand • Trend factor to compensate for static definition of cats • Reduced data complications

  37. Summary of Results So Far:

  38. Pivotal Question: Can Countrywide or Regional Data Help Quantify the True Prospective Mean Catastrophe Loss in a Given State?

  39. Pivotal Question: Can Countrywide or Regional Data Help Quantify the True Prospective Mean Catastrophe Loss in a Given State? Issues: • Provisions need to reflect adequacy and stability • All company surplus is generally available and at risk • Are regional or sub state provisions appropriate? • Perceived cost sharing will be scrutinized

  40. Goals of Relativity Method • Develop accurate, stable results by state that results in an appropriate provision on a countrywide basis • Systematic approach to handle extreme events so a single outlying year does not drive the cat provision for a state • Appropriate application of credibility procedure • Provide result that is responsive to recent demographic and cat definition shifts

  41. Issues Addressed • How to be responsive to changes in risk due to population shifts or cat definition changes while still including an appropriate number of years • How does one define an outlying event • Individual state vs. countrywide • How to incorporate credibility

  42. State Relativity Weighted with Countrywide Complement – General Outline • Develop State Damage Ratios • Calculate Countywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision

  43. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Develop each state’s damage ratios for years 1981-2000 • State Damage Ratios – Losses/AIY • Only use years 1981 forward. Data for years 1971 through 1980 is sparse as evidenced by yearly variance.

  44. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Each year’s Countrywide damage ratio is calculated as the weighted average of state damage ratios using latest year AIYs as weights • Eliminates distortion of state distributional shifts over time • Countrywide catastrophe provision is the arithmetic average of the most recent 10 years of damage ratios

  45. Figure 1 YearsLinear trend 1971-1978 0.006 1979-1989 0.000 1990-1999 -0.019 1990-2000 -0.010

  46. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Calculate state relativities as the ratio of state damage ratios to countrywide damage ratios • Relativities should be more stable than damage ratios • Trend should not be a problem so we can use more years of data than the Countrywide Catastrophe Provision

  47. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Any relativity greater than the mean plus three standard deviations is capped to the next lowest relativity (not the cap number) • Intuitively we are replacing a once in a hundred year event with a once in 20 • Benefit of capping process • Represents a systematic approach to dealing with extreme events • Cap is dynamic and is allowed to shift if exposure in a state is changing over time • Censoring at the cap would not have much impact and therefore would not result in increased stability

  48. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Calculate arithmetic average of 1981-2000 capped relativities • Using a arithmetic average is simple • No benefit of weighting relativities has been shown since relationship of variability to exposure level is unclear • Arithmetic average relativity does not differ significantly from an AIY weighted average

  49. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • Uses Buhlmann credibility factor: n/(n+k) • n = number of years of relativities in average • We use number of years rather than exposures because exposures not independent, especially past a certain threshold where exposure concentration increases • k = average process variance/variance of hypothetical means • The process variance and variance of hypothetical means are calculated using all available years of capped relativities across all states. • Complement of credibility of 1.000 is not appropriate when there is a wide spread of average relativities • Solution lies in balancing process described on next slide

  50. Develop State Damage Ratios • Calculate Countrywide Damage Ratios • Calculate State Relativities • Cap State Relativities • Average Capped Relativities • Credibility Weight with CW Average of 1.000 • Balance Back to CW Average of 1.000 • Calculate Statewide Catastrophe Provision State Relativity Weighted with Countrywide Complement • At this point, the individual state relativities result in a countrywide relativity of less than 1.000. Relativities are adjusted to achieve an overall adequate level as follows: • Determined on a countrywide basis what our expected losses would be based on the countrywide selected catastrophe factor • Sum the pre-balanced expected losses across all states • We distribute the difference between 1 and 2 in proportion to each state’s standard deviation measured in latest year expected losses. • Using this approach has several benefits: • Results in an appropriate provision countrywide • It compensates for high (low) relativity states being underestimated (overestimated) by the use of a 1.000 complement of credibility. • Each state’s resulting cat load is a function of its own size and variability

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