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Kernel density classification and boosting: an L_2 analysis

机译:内核密度分类和增强:L_2分析

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摘要

Kernel density estimation is a commonly used approach to classification. However, most of the theoretical results for kernel methods apply to estimation per se and not necessarily to classification. In this paper we show that when estimating the difference between two densities, the optimal smoothing parameters are increasing functions of the sample size of the complementary group, and we provide a small simluation study which examines the relative performance of kernel density methods when the final goal is classification. A relative newcomer to the classification portfolio is "boosting", and this paper proposes an algorithm for boosting kernel density classifiers. We note that boosting is closely linked to a previously proposed method of bias reduction in kernel density estimation and indicate how it will enjoy similar properties for classification. We show that boosting kernel classifiers reduces the bias whilst only slightly increasing the variance, with an overall reduction in error. Numerical examples and simulations are used to illustrate the findings, and we also suggest further areas of research.
机译:内核密度估计是一种常用的分类方法。但是,大多数核方法的理论结果本身都适用于估计,而不一定适用于分类。在本文中,我们表明,当估计两个密度之间的差异时,最佳平滑参数是互补组样本量的递增函数,并且我们提供了一个小型模拟研究,该研究考察了最终目标时核仁密度方法的相对性能。是分类。分类组合的一个相对较新的概念是“增强”,本文提出了一种提高核密度分类器的算法。我们注意到,增强与内核密度估计中先前提出的减少偏差的方法紧密相关,并指出它将如何享受相似的分类性能。我们表明,增强内核分类器可减少偏差,而仅稍微增加方差,从而总体上减少误差。数值示例和模拟用于说明发现,我们也建议进一步的研究领域。

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