An Introduction to Kernel and Nearest-Neighbor Nonparametric Regression

Naomi Altman(Cornell University)
The American Statistician
August 1, 1992
Cited by 4,974

Abstract

Abstract Nonparametric regression is a set of techniques for estimating a regression curve without making strong assumptions about the shape of the true regression function. These techniques are therefore useful for building and checking parametric models, as well as for data description. Kernel and nearest-neighbor regression estimators are local versions of univariate location estimators, and so they can readily be introduced to beginning students and consulting clients who are familiar with such summaries as the sample mean and median.


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