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Archimedean Copulas

This study explores the relationships between Archimedean copulas and diagonal band/minimum information copulas under correlation constraints. It involves the computation of relative information and analysis of datasets sampled from Unicorn software. Theoretical background, procedure explanation, analysis results, and conclusions are provided.

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Archimedean Copulas

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  1. Archimedean Copulas Theodore Charitos MSc. Student CROSS

  2. Task-Goal • Examination of relations between Archimedean copulas and diagonal band or minimum information copulas given correlation constraints • Computation of relative information with respect to uniform distribution for each family.

  3. Accomplishment of tasks • Use of the algorithm provided in the paper of Christian Genest and Louis-Paul Rivest “Statistical Inference Procedures for Bivariate Archimedean Copulas”. • Use of small program in Matlab for calculating numerically the relative information with respect to uniform distribution.

  4. Structure of presentation • Theoretical Background • Explanation and description of the whole procedure proposed by Genest and Rivest. • Analysis of datasets sampled from Unicorn software. • Results • Conclusions-Discussions

  5. Theoretical Background Definition: A bivariate distribution function with marginals and is said to be generated by an Archimedean copula if it can be expressed in the form for some convex, decreasing function on in such a way that

  6. Proposition: Let and be uniform random variates whose dependence function is of the form for some convex decreasing function defined on with the property that . Set , and . Then is uniformly distributed on , is distributed as and , are independent random variables.

  7. Proposition: Let X and Y be uniform random variables with dependence function . For let and define The functionis convex,decreasing and satisfiesif and only if for all . It is obvious from the above propositions that is determined as long as can be determined from the dataset. This will be done in our case via a nonparametric estimation of the distribution of V based on a decomposition of Kendall’s tau.

  8. A pair of random variables is concordant if large values of one tend to be associated with large values of the other and vice versa.More precisely, if we have two observations and from a vectorof continuous random variables we say that and are concordant if and . Similarly, and are discordant if and or vice versa.

  9. Definition The Kendall’s tau for the sample is defined as where c is the number of concordant pairs, d is the number of discordant pairs from n observations of a vector and is the number of distinct pairs of observations in the sample.

  10. For Archimedean copulas the Kendall’s tau statistic can be conveniently computed via the identity Apparently, the problem now of estimating the bivariate dependence function relies on the estimation of . Genest and Rivest provide a nonparametric procedure for estimating and also .

  11. Analysis of various datasets The algorithm proposed by Genest and Rivest uses the variables where the symbol # stands for the cardinality of a set. If denotes the distribution function of apoint mass at the origin, then a nonparametricestimator of is given by Knowing that , a sample equivalent for the estimation of is

  12. Family Clayton Frank Gumbel -

  13. The next step of the analysis concerns the performance of a Pearson chi-squared goodness of fit test statistic for each family in order to assess the fit of the various models. This means that a classification of the dataset is made each time constituting the observed frequencies.However, since the chi-squared test requires predicted values for its computation, it is necessary to generate random variates whose joint distribution belongs to one of the mentioned Archimedean families

  14. Algorithm for sampling from Archimedean families 1.Generate two independent uniform variates u and t. 2. Set 3. Set v = 4. The desired pair is

  15. Archimedean Family Clayton Frank Gumbel

  16. Clayton’s joint density with a=1.514 Frank’s joint density with a=4.604 Gumbel’s joint density with a=0.757

  17. In general, the relative information with respect to uniform distribution for the bivariate case is computed as where is the joint density of and An approximation of the real solution in each case will be provided, which however is enough to indicate what should someone expect from each Archimedean family.

  18. To illustrate the above procedure six datasets (n=1000) were at first sampled and thoroughly analyzed. The correlations were 0.2, 0.65 and 0.9 for both the diagonal band and the minimum information copulas. A classification of the frequencies was also decided. • For the sake of completeness, six more datasets with similar correlations constraints but different size (n=5000) and classification were also analyzed in order to compare results.

  19. Recapitulation-Steps • Sample from diagonal band and minimum information copulas. • Estimate Kendal’s tau and the empirical lambda function. • Estimate the parameters for each family according to the previous results. • Estimate the lambda functions for each family. • Classify the dataset in categories and simulate values from each family according to their estimated parameters. • Perform chi-square goodness of fit test and compare the resulting fits. • Compute the relative information with respect to uniform distribution. • Repeat the whole procedure for different correlations and size of the dataset.

  20. Examples of classifications from diag.band with 0.2 Cross-Classification of X and Y (Observed values) X\Y 8 43 36 0 47 166 144 38 40 131 186 52 0 49 46 14 Cross-Classification of X and Y (Observed values) X\Y 67 126 118 111 78 1 105 222 230 173 118 78 129 211 207 131 203 131 126 196 121 199 244 128 80 119 183 233 239 127 0 84 123 152 126 77

  21. =0.0877273 Statistic df Clayton 47.2727 8 Frank 34.4113 8 Gumbel 49.5668 8 =0.1076116 Statistic df Clayton 52.3819 7 Frank 32.7662 8 Gumbel 47.2727 8

  22. =0.431007 Statistic df Clayton 219.842 5 Frank 66.528 7 Gumbel 129.861 6 =0.424140 Statistic df Clayton 113.601 5 Frank 24.808 7 Gumbel 119.047 7

  23. =0.6820981 Statistic df Clayton 265.805 3 Frank 67.031 3 Gumbel 182.181 3 =0.6991151 Statistic df Clayton 215.628 3 Frank 39.309 3 Gumbel 140.177 3

  24. =0.1083165 Statistic df Clayton 356.184 25 Frank 301.967 25 Gumbel 357.828 25 =0.1040581 Statistic df Clayton 148.598 25 Frank 65.967 25 Gumbel 94.2128 25

  25. =0.4270299 Statistic df Clayton 1707.548 22 Frank 604.8511 23 Gumbel 1398.062 23 =0.4398811 Statistic df Clayton 1044.165 23 Frank 127.982 23 Gumbel 557.023 23

  26. =0.6801317 Statistic df Clayton 1685.918 15 Frank 473.3928 17 Gumbel 1128.659 17 =0.6906168 Statistic df Clayton 1142.479 14 Frank 124.384 16 Gumbel 677.908 17

  27. Relative Information with respect to uniform distribution Clayton Frank Gumbel Diag.band 0.2 (n=1000) 0.0144 0.8261 0.0887 Min.inf.0.2 (n=1000) 0.0215 0.7925 0.1099 Diag.band 065 (n=1000) 0.3207 0.4932 0.5222 Min.inf.0.65 (n=1000) 0.3107 0.4944 0.5126 Diag.band 0.9 (n=1000) 0.8653 0.6884 0.8794 Min.inf.0.9 (n=1000) 0.9202 0.7247 0.9015 Diag.band0.2 (n=5000) 0.0218 0.7913 0.1106 Min.inf.0.2 (n=5000) 0.0202 0.7983 0.1060 Diag.band 0.65 (n=5000) 0.3150 0.4939 0.5167 Min.inf.0.65 (n=5000) 0.3343 0.4920 0.5351 Diag.band0.9 (n=5000) 0.8592 0.6844 0.8768 Min.inf.0.9 (n=5000) 0.8924 0.7060 0.8905

  28. Conclusions-Comments • • for correlation 0.2 all the three families seem to fit reasonably well when n=1000,but when n=5000 only Frank’s and also Gumbel’s for the min.information. • • for correlation 0.65 the results are quite promising only when n=1000 • • for correlation 0.9 Frank’s and Gumbel’s family seem to fit the data when n=1000 and only Frank’s family when n=5000. • •the results are more promising in the cases of minimum information copula and this is actually a fact that holds for all the datasets no matter what the correlation is. • •the results are much better when the size of the dataset is smaller. • It is obvious that the chi-square test statistic is sensitive to the number of cells.For greater size n and 6x6 cross-classification the results in almost all cases are disappointing. A performance of another goodness of fit test might result in more encouraging conclusions. • • for correlation 0.2Clayton’s family has the smallest values of relative informationwith respect to uniform distribution. • • Nonetheless, for greater correlations, Frank’s family has the smallest values.

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