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Investigating Extreme Dependences: Concepts and Tools

Yannick Malevergne
University of St. Etienne - Graduate School of Economics and Business Administration (ISEAG); EM Lyon (Ecole de Management de Lyon) - Department of Economics, Finance, Control

Didier Sornette
ETH Zurich


March 7, 2002


Abstract:     
We investigate the relative information content of six measures of dependence between two random variables X and Y for large or extreme events for several models of interest for financial time series. The six measures of dependence are respectively the linear correlation and Spearman's rho conditioned on signed exceedance of one variable above the threshold, or on both variables, the linear correlation conditioned on absolute value exceedance (or large volatility) of one variable, the so-called asymptotic tail-dependence and a probability-weighted tail dependence coefficient. The models are the bivariate Gaussian distribution, the bivariate Student's distribution, and the factor model for various distributions of the factor. We offer explicit analytical formulas as well as numerical estimations for these six measures of dependence in the limit exploring the extreme tails. This provides a quantitative proof that conditioning on exceedance leads to conditional correlation coefficients that may be very different from the unconditional correlation and gives a straightforward mechanism for fluctuations or changes of correlations, based on fluctuations of volatility or changes of trends. Moreover, these various measures of dependence exhibit different and sometimes opposite behaviors, suggesting that, somewhat similarly to risks whose adequate characterization requires an extension beyond the restricted one-dimensional measure in terms of the variance (volatility) to include all higher order cumulants or more generally the knowledge of the full distribution, tail-dependence has also a multidimensional character.

JEL Classifications: C10, G10, G15

Working Paper Series

Date posted: March 09, 2002 ; Last revised: April 22, 2002

Suggested Citation

Malevergne, Yannick and Sornette, Didier , Investigating Extreme Dependences: Concepts and Tools (March 7, 2002). Available at SSRN: http://ssrn.com/abstract=303465 or doi:10.2139/ssrn.303465


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Contact Information

Didier Sornette (Contact Author)
ETH Zurich ( email )
Department of Management, Technology and Economics
Kreuzplatz 5
8032 Zurich CH-1015
Switzerland
41446328917 (Phone)
41446321914 (Fax)
HOME PAGE: http://www.er.ethz.ch/
Yannick Malevergne
University of St. Etienne - Graduate School of Economics and Business Administration (ISEAG) ( email )
2, Rue Tréfilerie
F-42023 St. Etienne Cedex 2 France
EM Lyon (Ecole de Management de Lyon) - Department of Economics, Finance, Control ( email )
23 av. Guy de Collongue BP 174
69132 Ecully Cedex France
HOME PAGE: http://www.em-lyon.com/english/faculty/professors/efc/malevergne/index.aspx
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