Analytic Bias Reduction for $k$-Sample Functionals
Abstract
We give analytic methods for nonparametric bias reduction that remove the need for computationally intensive methods like the bootstrap and the jackknife. We call an estimate {\it th order} if its bias has magnitude as , where is the sample size (or the minimum sample size if the estimate is a function of more than one sample). Most estimates are only first order and require O(N) calculations, where is the total sample size. The usual bootstrap and jackknife estimates are second order but they are computationally intensive, requiring calculations for one sample. By contrast Jaeckel's infinitesimal jackknife is an analytic second order one sample estimate requiring only O(N) calculations. When th order bootstrap and jackknife estimates are available, they require calculations, and so become even more computationally intensive if one chooses . For general we provide analytic th order nonparametric estimates that require only O(N) calculations. Our estimates are given in terms of the von Mises derivatives of the functional being estimated, evaluated at the empirical distribution. For products of moments an unbiased estimate exists: our form for this "polykay" is much simpler than the usual form in terms of power sums.
Cite
@article{arxiv.0903.2889,
title = {Analytic Bias Reduction for $k$-Sample Functionals},
author = {Christopher S. Withers and Saralees Nadarajah},
journal= {arXiv preprint arXiv:0903.2889},
year = {2009}
}