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Risk Dependency Research: A Progress Report

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Suggests definition of 'tail correlation'. 20. Phase 1: Formula Approximation #2 ... Joe, H, 1997 'Multivariate Models and Dependence', Chapman-Hall, London ... – PowerPoint PPT presentation

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Title: Risk Dependency Research: A Progress Report


1
Risk Dependency ResearchA Progress Report
  • Enterprise Risk Management Symposium
  • Washington DC July 30, 2003

B. John Manistre FSA, FCIA, MAAA
2
Agenda
  • Nature of the project
  • Tool Development
  • Risk Measures
  • Special Results for Normal Risks
  • Extreme Value Theory
  • Copulas
  • Formula Approximations
  • Toward Real Application
  • Literature Survey

3
Nature of the Project
  • Response to SoAs Request for Proposal on RBC
    Covariance
  • Broad Mandate determine the covariance and
    correlation among various insurance and
    non-insurance risks generally, particularly in
    the tail.
  • Phase 1 Theoretical Framework/Literature Search
  • Phase 2 Data Collection/Analysis - the practical
    element
  • Project organized at University of Waterloo
  • J Manistre (Aegon USA), H Panjer(U of W)
    graduate students J Rodriguez, V Vecchione

4
Phase 1 Theoretical Framework
  • Tools
  • Risk Measures
  • Extreme Value Theory
  • Copulas
  • Formula Approximations to Risk Measures
  • New results
  • Formula Approximations suggest measures of tail
    covariance and correlation

5
Phase 1 Risk Measures
  • Project focusing on risk measures defined by an
    increasing distortion function
  • For a random variable X risk measure is given by
  • where
  • Capital is usually taken to be the excess of the
    risk measure over the mean

6
Phase 1 Risk Measures- Examples
  • Project does not take a position on which risk
    measure is best
  • Planning to work with the following
  • Value at Risk
  • Wang Transform
  • Block Maximum
  • Conditional Tail Expectation

7
Phase 1 Risk Measures
  • For any Normal Risk X,
  • Risk measure is mean plus a multiple of the std
    deviation
  • Can use Kg as a tool to understand the risk
    measure

8
Phase 1 Risk Measures
9
Phase 1 Risk Measures - Aggregating Normal Risks
  • Suppose all risks normal and
  • Then
  • For any g conclude
  • This is An exact solution to an approximate
    problem.

10
Phase 1Extreme Value Theory
  • EVT applies when distribution of scaled maxima
    converge to a member of the three parameter EVT
    family
  • Works for most standard distributions e.g.
    normal, lognormal, gamma, pareto etc.
  • Key Result is the Peaks Over Thresholds
    approximation
  • When EVT applies excess losses over a suitably
    high threshold have an approximate generalized
    pareto distribution
  • Suggests that a generalized pareto distribution
    should be a reasonable model for the tail of a
    wide range of risks

11
Phase 1Copulas
  • A tool for modeling the dependency structure for
    a set of risks with known marginal distributions
  • Technically a probability distribution on the
    unit n-cube
  • Large academic literature
  • Some sophisticated applications in PC
    reinsurance
  • Project is concentrating on
  • t- copulas
  • Gumbel copulas
  • Clayton copulas

12
Phase 1Copulas
13
Phase 1Copulas
14
Phase 1Copulas
15
Phase 1Copulas
16
Phase 1 Formula Approximations
  • Simple Investment Problem. Let
  • Fix the joint distribution of the Ui and consider
  • Capital function is homogeneous of degree 1 in
    the exposure variables
  • Choose a target mix of risks
  • Put

17
Phase 1 Formula Approximations
  • Theoretical Result The first two derivatives
    are given by
  • Some challenges in using these results to
    estimate derivatives. Second derivatives harder
    to estimate.
  • Some risk measures easier to work with than
    others.
  • Project team is working with a number of
    approaches.

18
Phase 1 Formula Approximations
  • Let ri be a vector such that
    then the homogeneous formula
    approximation
  • agrees with the capital function and its first
    two derivatives at the target risk mix
    .
  • If ri is a vector such that
    then a homogeneous formula
    approximation is

19
Phase 1 Formula Approximation 1
  • When ri 0
  • Suggests definition of tail correlation.

20
Phase 1 Formula Approximation 2
  • Some simple choices
  • ri 0
  • ri Ci
  • ri ciCg (Ui)
  • When ri 0
  • Exact for Normal Risks

21
Phase 1 Formula Approximation 2
  • When ri Ci formula is essentially first order
  • Factors Ci lt ci already reflect
    diversification.
  • Suggests many existing capital formulas are as
    good (or bad) as first order Taylor Expansions.

22
Phase 1 Formula Approximation 3
  • When ri ci we get
  • Undiversified capital less an adjustment
    determined by inverse correlation

23
Phase 1 Formula Approximations
  • Practical work so far suggests
  • is a more robust approximation. In particular,
    when the risks are normal
  • Other homogeneous approximations are possible.

24
Phase 1 Numerical Example Inputs
  • Three Pareto Variates combined
    with t-copula

25
Phase 1 Numerical Example Results

26
Phase 2 Real Application
  • Phase 2 not yet begun
  • Will not be totally objective
  • Process
  • Develop high level models for individual risks
  • e.g. model C-1 losses with a pareto distn.
  • Assume a copula consistent with expert opinion
  • Adopt a measure of tail correlation and
    calculate
  • Make subjective adjustments to final results as
    nec.

27
Literature Survey Risk Measures
  • Artzner, P., Delbaen, F., Thinking Coherently,
    Eber, J-M., Heath, D., Thinking Coherently,
    RISK (10), November 68-71.
  • Artzner, P, Application of Coherent Risk
    Measures to Capital Requirements in Insurance,
    North American Actuarial Journal (3), April 1999.
  • Wang,S.S., Young, V.R. , Panjer, H.H., Axiomatic
    Characterization of Insurance Prices, Insurance
    Mathematics and Economics (21) 171-183.
  • Acerbi, C., Tasche, D., On the Coherence of
    Expected Shortfall, Preprint, 2001.

28
Literature SurveyMeasures and Models of
Dependence (1)
  • Frees, E.W., Valdez,E.A., Understanding
    Relationships Using Copulas, North American
    Actuarial Journal (2) 1998, pp 1-25.
  • Embrechts, P., NcNeil, A., Straumann, D.,
    Correlation and Dependence in Risk Mangement
    Properties and Pitfalls, Preprint 1999
  • Embrechts, P., Lindskog, F., McNeil, A.,
    Modelling Dependence with Copulas and
    Applications to Risk Management, Preprint 2001.
  • McNeil, A., Rudiger, F., Modelling Dependent
    Defaults, Preprint 2001.

29
Literature SurveyMeasures and Models of
Dependence (2)
  • Lindskog, F., McNeil, A., Common Poisson Shock
    Models Applications to Insurance and Credit Risk
    Modelling, Preprint 2001.
  • Joe, H, 1997 Multivariate Models and
    Dependence, Chapman-Hall, London
  • Coles, S., Heffernan, J., Tawn, J. Dependence
    Measures for Extreme Value Analysis, Extremes
    24, 339-365, 1999.
  • Ebnoether, S., McNeil, A., Vanini, P.,
    Antolinex-Fehr, P., Modelling Operational Risk,
    Preprint 2001.

30
Literature SurveyExtreme Value Theory
  • King, J.L., 2001 Operational Risk, John Wiley
    Sons UK.
  • McNeil,A., Extreme Value Theory for Risk
    Managers, Preprint 1999.
  • Embrechts, P. Kluppelberg, C., Mikosch, T.
    Modelling Extreme Events, Springer Verlag,
    Berlin, 1997.
  • McNeil, A., Saladin, S., The Peaks over
    Thresholds Method for Estimating High Quantiles
    of Loss Distributions, XXVIIth International
    ASTIN Colloquim, pp 22-43.
  • McNeil, A., On Extremes and Crashes, RISK,
    January 1998, London Risk Publications.

31
Literature SurveyFormula Approximation
  • Tasche, D.,Risk Contributions and Performance
    Measurement, Preprint 2000.
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