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Financial Risk Management of Insurance Enterprises

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Presentation on theme: "Financial Risk Management of Insurance Enterprises"— Presentation transcript:

1 Financial Risk Management of Insurance Enterprises
Dynamic Financial Analysis 1. D’Arcy, Gorvett, Herbers, and Hettinger - Contingencies 2. D’Arcy and Gorvett - JRI 1

2 Overview What is DFA? How is it different from other modeling procedures? How did DFA evolve? What are the basic approaches in DFA modeling? 2

3 Dynamic, Financial, Analysis
“Energy, continuous activity, intensity, interactive” Insurer variables are not fixed, but stochastic Financial “Related to management of money or investments” Evaluate insurer activities, both liabilities and assets Analysis “Examination of an interrelated system and its elements” 3

4 Definition of Dynamic Financial Analysis (DFA)
Casualty Actuarial Society definition: Analyze the financial condition of an insurance enterprise Financial condition refers to ability of capital and surplus to meet future obligations of insurer in “unknown future environment” For life insurers, similar modeling procedures are known as dynamic solvency testing or dynamic financial condition analysis 4

5 A Broader Concept DFA does not need to focus only on solvency issues
Other uses: Model ongoing operations over time instead of concentrating on the current position Determining the sensitivity of financial results to various environmental factors Identify specific scenarios where the insurer is exposed to significant risk of loss Valuation of a line of business or entire insurer 5

6 Definitions Appointed actuary
A “qualified” actuary that is appointed by the Board of Directors of an insurer Files actuarial opinion with the states stating that all reserves are appropriate and assets are adequate to meet liabilities 6

7 Analytic vs. Simulation
Analytic model provides exact solution based on precise relationships Simulation models can be used if exact mathematical representations do not exist Can accommodate complex relationships The “answer” in a simulation model is not just one number It is a range or distribution of plausible results 7

8 Prior Techniques Previous models evaluated insurer strategies under certain assumptions with respect to: Asset returns Underwriting results Economic environment (recession, expansion) Typically, these models ignored interaction of assets and liabilities The future was assumed to be essentially the same as the present Regardless of lifetime of policy/project 8

9 The Impetus Behind DFA Interest rate fluctuations in the 1970s
Life insurers are sensitive to interest rate changes Disintermediation resulted from high interest rates Rating agencies began to consider effect of interest rate swings on surplus/solvency 9

10 The “Seeds” of DFA RBC is first attempt at linking capital to risk of insurers The various RBC factors are the same for all insurers RBC has short term focus DFA customizes the analysis by accounting for specific insurer business plan both now and in the future 10

11 The DFA Approach Model variability of all important variables
Claims, catastrophes Asset returns Premium income Account for correlation among all factors within each scenario When modeling the entire insurer, include correlation among lines of business Project cash flows under the assumptions Determine the insurer’s financial position 11

12 Two Approaches to DFA: (1) Scenario Testing
Select several assumptions for all variables e.g., optimistic, pessimistic, and average A scenario is a set of assumptions about the future environment Determine financial position Better than point estimate but does not provide any likelihood information Range of outcomes is frequently too wide to make decisions 12

13 Two Approaches to DFA: (2) Stochastic Simulation
Select distributions for and correlations among all variables Draw randomly from each distribution Determine the aggregate financial outcome for each iteration Incorporate any variable interactions Analyze distribution of outcomes 13

14 Uses of Stochastic Simulation
Stochastic simulation provides more information than scenario testing Use of information depends on objectives How often does insurer go insolvent? Which assumptions are the most critical? What accounts for good/bad scenarios? If possible, select hedges to protect against bad scenarios 14

15 Categories of Insurer Risk
Balance sheet risk Changes in value of assets and liabilities Operating risk Investment and underwriting activities Actuaries have traditionally looked at liabilities and underwriting Balance sheet and operating risks are interrelated 15

16 Building a DFA Model Determine the objective
Evaluating solvency, valuation of a block of business or insurer Include only the most relevant factors Only model general asset classes such as bonds, equities, and mortgages Reserves should reflect economic value and incorporate discounting Model only the factors that are measurable 16

17 Variables in a DFA Model
Claim distributions are a result of frequency and severity Frequency of claims is affected by: Catastrophe Society trends (e.g., smoking, speed limit) Severity of claims is affected by inflation 17

18 DFA for Life Insurers Life insurer products are long term and are interest rate sensitive Option of policyholder to withdraw is very important Cash flow testing is a primitive form of DFA Test adequacy of assets vs. liabilities under a few scenarios NY Regulation 126 specifies seven scenarios 18

19 NY 126 Interest Rate Scenarios
Remain level for 10 years Increase ½ % per year for 10 years Increase 1% for 5 years, then decrease 1% for 5 years Pop-up 3% immediately, then level Pop-down 3% immediately, then level Decrease ½ % per year for 10 years Decrease 1% for 5 years, then increase 1% for 5 years 19

20 Dynamic Financial Analysis Model
How to Access and Run DFA Model Components of Model Underwriting Module Catastrophe Module Financial Module Tax Module Reinsurance Module Generating and Using the Output Future of DFA

21 Basics of DFA Model Model will be available for general use at:
Runs with Microsoft Excel Entire model to be subject to peer review Key variables of concern to U.S. property-liability insurers will be included Model will be as simplified as practical Flexibility for future enhancements Potential use as a DFA teaching tool

22 Underwriting Module Loss Frequency and Severity Rates and Exposures
Underwriting Cycle Jurisdictional Risk Aging Phenomenon

23 Catastrophe Module Number based on Poisson distribution
Focal point determined Size based on lognormal distribution Geographical distribution determined by correlation matrix Loss allocated to company based on market share

24 Financial Module Financial Variables Short-Term Interest Rate
Term Structure Default Premium Default Risk Equity Premium (Market Risk Premium) Inflation

25 Short-Term Interest Rate
Based on U.S. Treasury Bill rate Considered the “Workhorse” Variable Correlated with other variables Impacts market values of assets Add risk-premiums to derive other asset rates of return Term premium Default premium Equity premium

26 Short-Term Interest Rate
Cox-Ingersoll-Ross Model dr = a(b-r)dt + sr0.5dz r = short term interest rate a = speed of mean reversion = b = mean interest rate = s = volatility parameter = Volatility proportional to square root of r Values taken from Chan, et al, 1992 Journal of Finance

27 Inflation Affects future values of liabilities Function of:
Contemporaneous interest rates Current yield spreads Some autoregressive properties Three-step simulation process Simulate short-term interest rate Simulate general inflation rate Determine claim inflation by line of business

28 Tax Module Calculates income taxes based on both standard corporate tax rate and alternative minimum tax

29 Reinsurance Module Current approach Quota share reinsurance
Under development Excess of loss Catastrophe Aggregate excess

30 Using the DFA Output Proportion of outcomes that are unacceptable
Revise operations and rerun Analysis of the unacceptable outcomes Reduce risk that led to result Useful for: Solvency Testing Business Planning

31 The Future of DFA Is becoming a widely used actuarial tool
Will cause actuaries to work on both asset and liability sides of insurance business Will require actuaries to become proficient with financial tools and techniques Will increase the importance of finance on actuarial exams

32 Reminder!!! Exam 2 is Tuesday, April 10
Exam is 1-2:20 pm in 429 Armory Open book, open note 19

33 Exam 2 Calculations and explanations Focus is on lectures 13-20
ALM Duration and convexity Stochastic processes Interest rate models Binomial method and simulation Interest rate options CMOs Valuing swaps Understand material prior to first exam Derivatives Need for financial risk management

34 Pre-Exam Office Hours Monday, April 9 1-3 pm 311 Wohlers Hall


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