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Nonparametric multivariate density estimation: a comparative study

机译:非参数多元密度估计:一项比较研究

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The paper algorithmically and empirically studies two major types of nonparametric multivariate density estimation techniques, where no assumption is made about the data being drawn from any of known parametric families of distribution. The first type is the popular kernel method (and several of its variants) which uses locally tuned radial basis (e.g., Gaussian) functions to interpolate the multidimensional density; the second type is based on an exploratory projection pursuit technique which interprets the multidimensional density through the construction of several 1D densities along highly "interesting" projections of multidimensional data. Performance evaluations using training data from mixture Gaussian and mixture Cauchy densities are presented. The results show that the curse of dimensionality and the sensitivity of control parameters have a much more adverse impact on the kernel density estimators than on the projection pursuit density estimators.
机译:本文从算法和经验上研究了两种主要类型的非参数多元变量估计技术,其中不对从任何已知的参数分布族中提取的数据进行假设。第一种是流行的核方法(及其几种变体),它使用局部调整的径向基函数(例如,高斯函数)对多维密度进行插值;第二种类型基于探索性投影追踪技术,该技术通过沿着多维数据的高度“有趣”投影构建几个一维密度来解释多维密度。提出了使用来自混合高斯和混合柯西密度的训练数据进行的性能评估。结果表明,维数的诅咒和控制参数的敏感性对核密度估计器的不利影响远大于对投影追踪密度估计器的不利影响。

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