Testing for small bias of tail index estimators

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摘要

We determine the joint asymptotic normality of kernel and weighted least-squares estimators of the upper tail index of a regularly varying distribution when each estimator is a bivariate function of two parameters: the tuning parameter is motivated by possible underlying second-order behavior in regular variation, while no such behavior is assumed, and the fraction parameter determines that upper portion of the sample on which the estimator is based. Under the hypothesis that the scaled asymptotic biases of the estimators vanish uniformly in the parameter points considered, these results imply joint asymptotic normality for deviations of ratios of the estimators from 1, which in turn yield asymptotic chi-square tests for checking the small-bias hypothesis, equivalent to the constructibility of asymptotic confidence intervals. The test procedure suggests adaptive choices of the tuning and fraction parameters: data-driven (t)estimators.

论文关键词:Tail index,Kernel and weight estimators,Asymptotic joint distributions,Testing for small bias,Adaptive (t)estimators

论文评审过程:Received 11 November 2004, Revised 21 February 2005, Available online 25 May 2005.

论文官网地址:https://doi.org/10.1016/j.cam.2005.03.072