Dependence modeling using EVT and D-Vine


Abstract


Extreme occurrences such as extreme gains and extreme losses in financial market are unavoidable. Accurate knowledge of dependence on these extremes can help investors to adjust their portfolio mix accordingly. This paper therefore focuses on modeling dependence in extreme gains and losses in a portfolio consisting of three assets using D-Vine Copula. The concept of extreme value theory, the peak over threshold approach is use to identify the sets of extreme gains and extreme losses in each asset contain in the portfolio. For the three assets, a total of six sets (3 sets of extreme gains and 3 sets of extreme losses) are use in the dependence modeling. Due to the well known fact that financial return series are not independent and identically distributed (i.i.d), the returns are first filtered using a GARCH-type model before the extreme value analysis. To take into account the different types of dependence normally present in financial return series, the D-Vine copula, is use to model the dependence structure in the sets of extremes for all the assets in the portfolio. Empirical evidence using D-Vine copula for the dependence modeling, indicates that the conditional and unconditional dependence parameters are significantly different from zero for all pairs of tails. Some of these dependence parameters are negative, showing that an extreme gain in one asset may lead to an extreme loss in the other asset vice versa.

ABSTRACT: Extreme occurrences such as extreme gains and extreme losses in financial market are unavoidable. Accurate knowledge of dependence on these extremes can help investors to adjust their portfolio mix accordingly. This paper therefore focuses on modeling dependence in extreme gains and losses in a portfolio consisting of three assets using D-Vine Copula. The concept of extreme value theory, the peak over threshold approach is use to identify the sets of extreme gains and extreme losses in each asset contain in the portfolio. For the three assets, a total of six sets (3 sets of extreme gains and 3 sets of extreme losses) are use in the dependence modeling. Due to the well known fact that financial return series are not independent and identically distributed (i.i.d), the returns are first filtered using a GARCH-type model before the extreme value analysis. To take into account the different types of dependence normally present in financial return series, the D-Vine copula, is use to model the dependence structure in the sets of extremes for all the assets in the portfolio. Empirical evidence using D-Vine copula for the dependence modeling, indicates that the conditional and unconditional dependence parameters are significantly different from zero for all pairs of tails. Some of these dependence parameters are negative, showing that an extreme gain in one asset may lead to an extreme loss in the other asset vice versa.


DOI Code: 10.1285/i20705948v9n1p246

Keywords: D-Vine; Extreme Value; Pair-Copula; Dependence; GARCH

References


. Aas. K., Czado. C., Frigessi, A. and BaKKen, H. (2009). Pair-copula constructions of multivariate dependence. Insurance: Mathematics and Economics, 44,182-198.

. A.J. McNeil, R. Frey, and P. Embrechts. Quantitative Risk Management: Concepts, Techniques, Tools. Princeton University Press, 2005.

. Balkima, A. A. and de Haan, L. (1974). Residual life time at great age. Annals of Probability, 2, 792-804

. Bedford, T and R. M. Cooke (2001) “probability density decomposition for conditionally dependent random variables modeled by vines”, Annals of Mathematics and Artificial Intelligence 32, 245-268

. Bedford, T. and R. M. Cooke (2002) “Vines- a new graphical model for dependent random variables”. Annals of Statistics 30, 1031-1068.

. Camble, John Y., Lo, Andrew W., MacKinlay. A. Craig (1997). The econometrics of financial market, Princeton University Press, New Jersey.

. Cherubini, U., E. Luciano, and W. Vecchiato, 2004, copula methods in finance. Wiley.

. Dobric ́, J. and Schmid, F. (2005): Testing Goodness of fit for parametric Families of Copula- Application to Financial Data”, Communications in statistics: Simulation and computation, Vol. 34, pp 1053-1068.

. Engle, R.F., 1982. Autoregressive conditional heteroskedasticity with estimates of the variance of United Kingdom inflation. Econometrical 50(4), 987-1007

. Embrechts, P. Kluppelberg, C. and. Mikosch, T. (1997). Modeling Extremal Events for insurance and Finance. Berlin: Springer.

. Fisher, R.A. and Tippett, L.H.C. (1928). Limiting forms of the frequency distribution of largest or smallest members of a sample. Proceedings of Cambridge Philosophic society, 24, 180-190.

. Fisher, R.A. (1932). Statistical methods for Research Workers. Edinburg: Oliver and Boyd.

. Haff, I., Aas K., Frigessi A. (2010). On the Simplified Pair-Copula Construction-Simply useful or too Simplistic. Journal of multivariate analysis, 101, 1296-1310..

. Jenkinson, A.F.(1955). The frequency distribution of the annual maximum (minimum) values of meteorological events. Quarterly Journal of the Royal Meteorological Society, 81, 158-172.

. Joe H (1996). “Families of m-Variate Distribution with Given Margins and m(m-1)/2 Bivariate Dependence Parameters” In L Ru ̈schendorf, B Schweizer, MD Taylor (eds.), Distributions with Fixed Marginals and Related Topic, pp 120-141. Institute of Mathematical statistics, Hayward.

. Kahneman, Daniel and Amos Tversky (1979) “Prospect Theory: An Analysis of Decision under Risk”, Econometrical, ⅪⅦ (1979), 263-291.

. Kurowicha, D. and Cooke, R. (2006), Uncertainty Analysis with High Dimensional Dependence Modeling, New York: Wiley.

. Nelson, R. (2006). An introduction to Copula, 2nd edition. New York: Springer.

Pages 271-294. Providence, RI: American Mathematical Society.

. Patton, Andrew J, 2002, Skewness, Asymmetric Dependence, and Portfolios, working paper, Department of Economics, University of California, San Diego.

. Pickands, J.I. (1975). Statistical inference using extreme value order statistics. Annals of statistics, 3, 119-131.

. R Mashal and A. Zeevi, 2002. Beyond correlation: Extreme co-movements between financial assets. Technical report, Columbia University.

. Rosenblatt, M. (1952). Remarks on a multivariate transformation. Annals of Mathematical Statistics, 23, 470-472.

. Savu, C. and Trede, M. (2004): “Goodness-of-fit tests for parametric families of Archimedean copula”, CAWN, University of Muenster Discussion Paper, No 6.

. Schmidt, R. and Theodorescu, R. (2006): “On the Schur unimodality of copula and other multivariate distributions”, Seminal of Economics and Social Statistics, University of Cologne, Working Paper.

. Sklar, A. (1959). Fonction de re ́partition a ́ n dimensions at leurs marges Publications de I’Institut de Statistique de L’Universite’ de Paris, 8, 229-231.

. Von Mises, R (1954). La distribution de la plus grade de n valeurs. In Selected papers, VolumeⅡ, pages 271-294, American Mathematical Society, Providence, RⅠ


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