基于copula的多元密度估计支持向量机方法

Xiaoqin Shan, Jie Zhou, Feng Xiao
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引用次数: 5

摘要

本文提出了一种基于支持向量机技术和copula的多元密度函数估计方法。众所周知,支持向量机方法可以导致密度函数的稀疏和准确估计,然而,多元密度的边缘密度的知识并没有直接使用,尽管它们可能在一些应用中已知,如多传感器系统。该方法利用Sklar定理(联合分布函数的边值通过联结公式表示),将随机样本的边值和依赖结构有效地结合到密度估计中,从而获得更准确的估计。数值算例表明,该方法比直接支持向量机方法和基于copula的多元核密度方法的估计精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine Method for Multivariate Density Estimation Based on Copulas
In this paper, a new method for estimating multivariate density functions is proposed based on Support Vector Machine (SVM) technique and copulas. It is well-known that the SVM method can result in a sparse and accurate estimate of a density function, however, the knowledge of marginal densities of a multivariate density are not employed directly although they may be known in some applications such as multi-sensor systems. Benefitted from Sklar's theorem, in which a joint distribution function is characterized by its margins through a copula, the proposed approach can incorporate efficiently the knowledge of the margins and dependence structure of random samples into density estimation so that more accurate estimates are obtained. Some numerical examples are given to demonstrate that our approach can result in more accurate estimates than both direct SVM method and multivariate kernel density method based on copulas.
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