A Subsampling Approach to Estimating the Distribution of Diverging Statistics with Applications to Assessing Financial Market Risks

Patrice Bertail, INRA-CORELA
Christian Haefke, University of California, San Diego
Dimitris N. Politis, University of California, San Diego
Halbert White, University of California, San Diego

UCSD Economics Discussion Paper 2000-01
January 2000

Abstract

In this paper we propose a subsampling estimator for the distribution of statistics diverging at either known or unknown rates when the underlying time series is strictly stationary and strong mixing. Based on our results we provide a detailed discussion how to estimate extreme order statistics with dependent data and present two applications to assessing financial market risk. Our method performs well in estimating Value at Risk and provides a superior alternative to Hill's estimator in operationalizing Safety First portfolio selection.


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