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Nonparametric estimation and classification using radial basis function nets and empirical risk minimization

机译:使用径向基函数网和经验风险最小化的非参数估计和分类

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摘要

Studies convergence properties of radial basis function (RBF) networks for a large class of basis functions, and reviews the methods and results related to this topic. The authors obtain the network parameters through empirical risk minimization. The authors show the optimal nets to be consistent in the problem of nonlinear function approximation and in nonparametric classification. For the classification problem the authors consider two approaches: the selection of the RBF classifier via nonlinear function estimation and the direct method of minimizing the empirical error probability. The tools used in the analysis include distribution-free nonasymptotic probability inequalities and covering numbers for classes of functions.
机译:研究大量基函数的径向基函数(RBF)网络的收敛性,并回顾与该主题相关的方法和结果。作者通过经验风险最小化获得网络参数。作者表明,在非线性函数逼近和非参数分类中,最优网络是一致的。对于分类问题,作者考虑了两种方法:通过非线性函数估计来选择RBF分类器,以及将经验误差概率最小化的直接方法。分析中使用的工具包括无分布的非渐近概率不等式和函数类别的覆盖数。

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