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Three Sides of Smoothing: Categorical Data Smoothing, Nonparametric Regression, and Density Estimation

机译:平滑的三面:分类数据平滑,非参数回归和密度估计

摘要

The past forty years have seen a great deal of research into the construction and properties of nonparametricestimates of smooth functions. This research has focused primarily on two sides of the smoothingproblem: nonparametric regression and density estimation. Theoretical results for these two situationsare similar, and multivariate density estimation was an early justification for the Nadaraya-Watsonkernel regression estimator.A third, less well-explored, strand of applications of smoothing is to the estimation of probabilities incategorical data. In this paper the position of categorical data smoothing as a bridge between nonparametricregression and density estimation is explored. Nonparametric regression provides a paradigmfor the construction of effective categorical smoothing estimates, and use of an appropriate likelihoodfunction yields cell probability estimates with many desirable properties. Such estimates can be usedto construct regression estimates when one or more of the categorical variables are viewed as responsevariables. They also lead naturally to the construction of well-behaved density estimates using local orpenalized likelihood estimation, which can then be used in a regression context. Several real data sets areused to illustrate these points.
机译:在过去的40年中,对光滑函数的非参数估计的构造和性质进行了大量研究。这项研究主要集中在平滑问题的两个方面:非参数回归和密度估计。这两种情况的理论结果是相似的,多变量密度估计是Nadaraya-Watsonkernel回归估计器的早期依据。本文探讨了分类数据平滑作为非参数回归与密度估计之间的桥梁的位置。非参数回归为构造有效的分类平滑估计提供了范式,并且使用适当的似然函数会产生具有许多理想属性的单元概率估计。当一个或多个分类变量被视为响应变量时,此类估计可用于构建回归估计。它们也自然导致使用局部经正交化的似然估计来构造良好的密度估计,然后可以将其用于回归上下文中。使用几个实际数据集来说明这些观点。

著录项

  • 作者

    Simonoff Jeffrey S.;

  • 作者单位
  • 年度 1997
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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