通过单变量指数族分布的图形模型

Eunho Yang, Pradeep Ravikumar, Genevera I. Allen, Zhandong Liu
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引用次数: 161

摘要

无向图形模型,或马尔可夫网络,是一类流行的统计模型,用于各种各样的应用程序。这类常用的实例包括高斯图形模型和伊辛模型。然而,在许多情况下,使用图形模型的哪个子类可能并不清楚,特别是对于非高斯和非分类数据。在本文中,我们考虑了图形模型的一个一般子类,其中节点明智的条件分布来自指数族。这使我们能够从单变量指数族分布(如泊松分布、负二项分布和指数分布)中推导出多变量图形模型分布。我们的主要贡献包括一类拟合这些图形模型分布的m估计量;严格的统计分析表明,这些m估计器准确地恢复了真实的图形模型结构,并且概率很高。我们提供了基因组和蛋白质组学网络的例子,这些网络是通过我们的一类源自泊松分布和指数分布的图形模型的实例来学习的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graphical models via univariate exponential family distributions
Undirected graphical models, or Markov networks, are a popular class of statistical models, used in a wide variety of applications. Popular instances of this class include Gaussian graphical models and Ising models. In many settings, however, it might not be clear which subclass of graphical models to use, particularly for non-Gaussian and non-categorical data. In this paper, we consider a general sub-class of graphical models where the node-wise conditional distributions arise from exponential families. This allows us to derive multivariate graphical model distributions from univariate exponential family distributions, such as the Poisson, negative binomial, and exponential distributions. Our key contributions include a class of M-estimators to fit these graphical model distributions; and rigorous statistical analysis showing that these M-estimators recover the true graphical model structure exactly, with high probability. We provide examples of genomic and proteomic networks learned via instances of our class of graphical models derived from Poisson and exponential distributions.
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