Tail index estimation in small smaples Simulation results for independent and ARCH-type financial return models |
| |
Authors: | Wagner Niklas Marsh Terry A. |
| |
Affiliation: | (1) Department of Business and Economics, Munich University of Technology, D-80290 Munich, Germany;(2) Haas School of Business, S545, U.C. Berkeley, 94720-1900 Berkeley, CA, U.S.A. |
| |
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. This paper is a shortened version of the Berkeley Research Program in Finance Working Paper RPF-295. Thanks are to the Center for Mathematical Sciences at Munich University of Technology for generously providing access to computer facilities and to participants at the IAFE 2001 Budapest, OR 2002 Klagenfurt, EIR 2002 London, DGF 2002 Cologne, FBI 2002 Karlsruhe conferences and the 2001 Wallis Workshop for helpful comments. Two anonymous referees provided helpful suggestions in streamlining the material. Niklas Wagner acknowledges a Maple program by Klaus Kiefersbeck and financial support by Deutsche Forschungsgemeinschaft (DFG). |
| |
Keywords: | fat-tails tail index of stationary marginal distributions Hill estimator minimal AMSE |
本文献已被 SpringerLink 等数据库收录! |
|