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Skewing and Generalized Jackknifing in Kernel Density Estimation
Abstract:Abstract

Kernel methods are very popular in nonparametric density estimation. In this article we suggest a simple estimator which reduces the bias to the fourth power of the bandwidth, while the variance of the estimator increases only by at most a moderate constant factor. Our proposal turns out to be a fourth order kernel estimator and may be regarded as a new version of the generalized jackknifing approach (Schucany W. R., Sommers, J. P. (1977 Schucany, W. R. and Sommers, J. P. 1977. Improvement of kernel type estimators. Journal of the American Statistical Association, 72: 420423. [Taylor & Francis Online], [Web of Science ®] [Google Scholar]). Improvement of Kernal type estimators. Journal of the American Statistical Association 72:420–423.) applied to kernel density estimation.
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