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Original Articles

BIAS REDUCTION AND ELIMINATION WITH KERNEL ESTIMATORS

Pages 1869-1888 | Published online: 20 Aug 2006
 

Abstract

A great deal of research has focused on improving the bias properties of kernel estimators. One proposal involves removing the restriction of non-negativity on the kernel to construct “higher-order” kernels that eliminate additional terms in the Taylor's series expansion of the bias. This paper considers an alternative that uses a local approach to bandwidth selection to not only reduce the bias, but to eliminate it entirely. These so-called “zero-bias bandwidths” are shown to exist for univariate and multivariate kernel density estimation as well as kernel regression. Implications of the existence of such bandwidths are discussed. An estimation strategy is presented, and the extent of the reduction or elimination of bias in practice is studied through simulation and example.

ACKNOWLEDGMENTS

The author would like to thank the editor and an anonymous referee for their helpful comments and suggestions.

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