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Institute of Business and Economic Research
Research Program in Finance Working Papers
University of California, Berkeley

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On Adaptive Tail Index Estimation for Financial Return Models
Niklas Wagner, University of California, Berkeley
Terry Marsh, Haas School of Business, University of California, Berkeley

Download the Paper (291 K, PDF file) - November 1, 2000 Tell a colleague about it.
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ABSTRACT:
Estimation of the tail index of stationary, fat-tailed return distributions is non-trivial since the well-known Hill estimator is optimal only under iid draws from an exact Pareto model. We provide a small sample simulation study of recently suggested adaptive estimators under ARCH-type dependence. The Hill estimator's performance is found to be dominated by a ratio estimator. Dependence increases estimation error which can remain substantial even in larger data sets. As small sample bias is related to the magnitude of the tail index, recent standard applications may have overestimated (underestimated) the risk of assets with low (high) degrees of fat-tailedness.

SUGGESTED CITATION:
Niklas Wagner and Terry Marsh, "On Adaptive Tail Index Estimation for Financial Return Models" (November 1, 2000). Research Program in Finance Working Papers. Paper RPF-295.
http://repositories.cdlib.org/iber/finance/RPF-295

 
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