全正分布的卷积及其在核密度估计中的应用

Ali Zartash, Elina Robeva
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引用次数: 0

摘要

在这项工作中,我们研究了一个全正随机向量的密度估计。一个随机向量分布的总正性意味着它的坐标之间有很强的正相关性,特别是意味着正关联。由于估计一个完全正的密度是一个非参数问题,我们采用(改进的)核密度估计方法。我们的主要结果是,以最小-最大闭集为中心的标度标准高斯凸点的和可证明地产生一个完全正的分布。因此,我们产生完全正估计量的策略是形成样本集的最小-最大闭包,并输出以该集合中的点为中心的高斯凸起的和。我们可以把这个和看作是最小最大闭集上的均匀分布和缩放后的标准高斯分布之间的卷积。我们进一步推测,卷积任何完全正的密度与标准高斯仍然是完全正的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutions of totally positive distributions with applications to kernel density estimation
In this work we study the estimation of the density of a totally positive random vector. Total positivity of the distribution of a random vector implies a strong form of positive dependence between its coordinates and, in particular, it implies positive association. Since estimating a totally positive density is a non-parametric problem, we take on a (modified) kernel density estimation approach. Our main result is that the sum of scaled standard Gaussian bumps centered at a min-max closed set provably yields a totally positive distribution. Hence, our strategy for producing a totally positive estimator is to form the min-max closure of the set of samples, and output a sum of Gaussian bumps centered at the points in this set. We can frame this sum as a convolution between the uniform distribution on a min-max closed set and a scaled standard Gaussian. We further conjecture that convolving any totally positive density with a standard Gaussian remains totally positive.
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来源期刊
Journal of Algebraic Statistics
Journal of Algebraic Statistics STATISTICS & PROBABILITY-
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