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Monotonicity preservation properties of kernel regression estimators

3 July 2020
I. Pinelis
ArXiv (abs)PDFHTML
Abstract

Three common classes of kernel regression estimators are considered: the Nadaraya--Watson (NW) estimator, the Priestley--Chao (PC) estimator, and the Gasser--M\"uller (GM) estimator. It is shown that (i) the GM estimator has a certain monotonicity preservation property for any kernel KKK, (ii) the NW estimator has this property if and only the kernel KKK is log concave, and (iii) the PC estimator does not have this property for any kernel KKK. Other related properties of these regression estimators are discussed.

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