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Paircopula constructions of multiple dependence

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Title: Paircopula constructions of multiple dependence


1
Pair-copula constructions of multiple dependence
  • Vine Copula Workshop
  • Delft Institute of Applied Mathematics,
    19. November, 2007

Kjersti Aas

Norwegian Computing Center Joint work with


Claudia Czado, Daniel Berg, Ingrid
Hobæk Haff, Arnoldo Frigessi and Henrik Bakken
2
Dependency modelling
  • Appropriate modelling of dependencies is very
    important for quantifying different kinds of
    financial risk.
  • The challenge is to design a model that
    represents empirical data well, and at the same
    time is sufficiently simple and robust to be used
    in simulation-based inference for practical risk
    management.

3
State-of-the-art
  • Parametric multivariate distribution
  • Not appropriate when all variables do not have
    the same distribution.
  • Marginal distributions copula
  • Not appropriate when all pairs of variables do
    not have the same dependency structure.
  • In addition, building higher-dimensional copulae
    (especially Archimedean) is generally recognised
    as a difficult problem.

4
Introduction
  • The pioneering work of Joe (1996) and Bedford and
    Cooke (2001) decomposing a multivariate
    distribution into a cascade of bivariate copulae
    has remained almost completely overseen.
  • We claim that this construction represent a very
    flexible way of constructing higher-dimensional
    copulae.
  • Hence, it can be a powerful tool for model
    building.

5
Copula
  • Definition
    A copula is a
    multivariate distribution C with uniformly
    distributed marginals U(0,1) on 0,1.
  • For any joint density f corresponding to an
    absolutely continuous joint distribution F with
    strictly continuous marginal distribution
    functions F1,Fn it holds that
  • for some n-variate copula density

6
Pair-copula decomposition (I)
  • Also conditional distributions might be expressed
    in terms of copulae.
  • For two random variables X1 and X2 we have
  • And for three random variables X1, X2 and X3
  • where the decomposition of f(x1x2) is
    given above.

7
Par-copula decomposition (II)
8
Pair-copula decomposition (III)
We denote a such decomposition a pair-copula
decomposition
9
Example I Three variables
  • A three-dimensional pair-copula decomposition is
    given by

10
Building blocs
  • It is not essential that all the bivariate
    copulae involved belong to the same family. The
    resulting multivariate distribution will be valid
    even if they are of different type.
  • One may for instance combine the following types
    of pair-copulae
  • Gaussian (no tail dependence)
  • Students t (upper and lower tail dependence)
  • Clayton (lower tail dependence)
  • Gumbel (upper tail dependence)

11
Example II Five variables
  • A possible pair-copula decomposition of a
    five-dimensional density is
  • There are as many as 240 different such
    decompositions in the five-dimensional case..

12
Vines
  • Hence, for high-dimensional distributions, there
    are a significant number of possible pair-copula
    constructions.
  • To help organising them, Bedford and Cooke (2001)
    and (Kurowicka and Cooke, 2004) have introduced
    graphical models denoted
  • Canonical vines
  • D-vines
  • Each of these graphical models gives a specific
    way of decomposing the density.

13
General density expressions
  • Canonical vine density
  • D-vine density

14
Five-dimensional canonical vine
15
Five-dimensional D-vine
16
Conditional distribution functions
  • The conditional distribution functions are
    computed using (Joe, 1996)
  • For the special case when v is univariate, and x
    and v are uniformly distributed on 0,1, we have
  • where ? is the set of copula parameters.

17
Simulation
18
Uniform variables
  • In the rest of this presentation we assume for
    simplicity that the margins of the distributions
    of interest are uniform, i.e. f(xi)1 and
    F(xi)xi for all i.

19
Simulation procedure (I)
  • For both the canonical and the D-vine, n
    dependent uniform 0,1 variables are sampled as
    follows
  • Sample wi i1,,n independent uniform on 0,1
  • Set

20
Simulation procedure (II)
  • The procedures for the canonical and D-vine
    differs in how F(xjx1,x2,,xj-1) is computed.
  • For the canonical vine, F(xjx1,x2,,xj-1) is
    computed as
  • For the D-vine, F(xjx1,x2,,xj-1) is computed as

21
Simulation algorithm for canonical vine
22
Parameter estimation
23
Three elements
  • Full inference for a pair-copula decomposition
    should in principle consider three elements
  • The selection of a specific factorisation
  • The choice of pair-copula types
  • The estimation of the parameters of the chosen
    pair-copulae.

24
Which factorisation?
  • For small dimensions one may estimate the
    parameters of all possible decompositions and
    comparing the resulting log-likelihood values.
  • For higher dimensions, one should instead
    consider the bivariate relationships that are
    most important to model correctly, and let this
    determine which decomposition(s) to estimate.
  • Note, that in the D-vine we can select more
    freely which pairs to model than in the canonical
    vine.

25
Choice of copulae types
  • If we choose not to stay in one predefined class,
    we may use the following procedure

26
Likelihood evaluation
27
Three important expressions
  • For each pair-copula in the decomposition, three
    expressions are important
  • The bivariate density
  • The h-function
  • The inverse of the h-function (for simulation).
  • For the Gaussian, Students t and Clayton
    copulae, all three are easily derived.
  • For other copulae, e.g. Gumbel, the inverse of
    the h-function must be obtained numerically.

28
Application Financial returns
29
Tail dependence
  • Tail dependence properties are often very
    important in financial applications.
  • The n-dimensional Students t-copula has been
    much used for modelling financial return data.
  • However, it has only one parameter for modelling
    tail dependence, independent of dimension.
  • Hence, if the tail dependence of different pairs
    of risk factors in a portfolio are very
    different, we believe the pair-copulae
    decomposition with Students t-copulae for all
    pairs to be better.

30
Data set
  • Daily data for the period from 04.01.1999 to
    08.07.2003 for
  • The Norwegian stock index (TOTX) T
  • The MSCI world stock index M
  • The Norwegian bond index (BRIX) B
  • The SSBWG hedged bond index S
  • The empirical data vectors are filtered through a
    GARCH-model, and converted to uniform variables
    using the empirical distribution functions before
    further modeling.
  • Degrees of freedom when fitting Students
    t-copulae to each pair of variables

31
D-vine structure
Six pair-copulae in the decomposition two
parameters for each copula.
32
The six data sets used
cSM cMT
cTB
cSTM cMBT
cSBMT
33
Estimated parameters
34
Comparison with Students t-copula
  • AIC
  • 4D Students t-copula -512.33
  • 4D Students t pair-copula decomposition -487.42
  • Likelihood ratio test statistic
  • Likelihood difference is 34.92 with 5 df
  • P-value is 1.56e-006 gt 4D Students t-copula is
    rejected in favour of the pair-copula
    decomposition.
  • May be used since the 4D Students t-copula is
    a special case of the 4-dimensional Students t
    pair-copula decomposition

35
Tail dependence
  • Upper and lower tail dependence coefficients for
    the bivariate Students t-copula (Embrechts et
    al., 2001).
  • Tail dependence coefficients conditional on the
    two different dependency structures
  • For a trader holding a portfolio of
    international stocks and bonds, the practical
    implication of this difference in tail dependence
    is that the probability of observing a large
    portfolio loss is much higher for the
    four-dimensional pair copula decomposition.

36
Some robustness studies
37
Robustness studies
  • Different factorisations
  • Different copula families

38
Other factorisations (I)
  • We also estimated the parameters for the 11 other
    D-vine factorisations for the 4-dimensional data
    set.

p-value for likelihood ratio test is 1.56e-006.
Maximum difference is 4.5
p-value for likelihood ratio test is 0.06.
39
Other factorisations (II)
  • We also did the following experiment
  • Do 100 times
  • Simulate 1094 observations from the D-vine
    corresponding to the highest likelihood.
  • For combination 1 to 12
  • Estimate parameters and compute likelihood
  • Compute difference between highest and lowest
    likelihood.
  • End do

40
Other factorisations (III)
  • Histogram of differences between highest and
    lowest likelihood

Min 1.78 Max 19.34 Mean
8.51 Observed 12.18
41
Other factorisations (IV)
  • We simulated 50,000 realisations of the
    dependency structure corresponding to the
    portfolio


    P 0.25S - 0.25M -
    0.25B 0.25T

  • one day ahead using the combinations that
    gave the highest and lowest likelihood, and
    compared some quantiles with the corresponding
    ones obtained for the data and the Student copula.

42
Other factorisations (V)
  • Not very large differences between different
    combinations.
  • However, the worst combination is not
    significantly better than the Student copula.
  • We still believe in modelling the pairs with the
    strongest tail dependence at the base level.

43
Copulae from different families (I)
Clayton copula?
44
Copulae from different families (II)
  • To investigate whether the Clayton copula is a
    better choice than the Students t-copula for the
    pair F(xSxM), F(xBxT), we examine the degree of
    closeness of the parametric and non-parametric
    versions of the distribution function K(z)
    defined by
  • For the Clayton copula K(z) is given by an
    explicit expression, while for the Students
    t-copula it has to be numerically derived.
  • We plot ?(z) z K(z)

45
Copulae from different families (III)
Clayton
Students t
Students t-copula remains the best choice!
46
Copulae from different families (IV)
  • Assume that C12 is a Student copula
  • Assume that C23 is a Student copula
  • Let F(u1u2)? C12(u1,u2)/? u2
  • Let F(u3u2)? C23(u2,u3)/? u2
  • Do we then have any prior knowledge of the copula
    C(F(u1u2), F(u3u2))?
  • Will it be best modelled by a Student copula?
  • Will it have both upper and lower tail dependence?

47
Comparison with other constructions.
48
Studies
  • Berg and Aas (2007)
  • Compare pair-copula constructions (PCCs) with
    nested Archimedean constructions (NACs) for
    rainfall data and equity returns (both data sets
    are 4-dimensional).
  • PCC superior for both data sets.
  • Fischer, Köck, Schlüter, Weigert (2007)
  • Compare PCCs with 5 other types of multivariate
    copulas (including NACs) for stock returns,
    exchange rate returns and metal returns (all data
    sets are 4-dimensional).
  • PCC superior for all three data sets.
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