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Graphical Models via Generalized Linear Models

机译:通过广义线性模型的图形模型

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Undirected graphical models, also known as Markov networks, enjoy popularity in a variety of applications. The popular instances of these models such as Gaussian Markov Random Fields (GMRFs), Ising models, and multinomial discrete models, however do not capture the characteristics of data in many settings. We introduce a new class of graphical models based on generalized linear models (GLMs) by assuming that node-wise conditional distributions arise from exponential families. Our models allow one to estimate multivariate Markov networks given any univariate exponential distribution, such as Poisson, negative binomial, and exponential, by fitting penalized GLMs to select the neighborhood for each node. A major contribution of this paper is the rigorous statistical analysis showing that with high probability, the neighborhood of our graphical models can be recovered exactly. We also provide examples of non-Gaussian high-throughput genomic networks learned via our GLM graphical models.
机译:无向图形模型(也称为Markov网络)在各种应用程序中都很受欢迎。这些模型的流行实例,例如高斯马尔可夫随机场(GMRF),伊辛模型和多项式离散模型,但是在许多情况下都无法捕获数据的特征。通过假定节点条件分布来自指数族,我们引入了基于广义线性模型(GLM)的新型图形模型。我们的模型允许拟合给定的GLM为每个节点选择邻域,从而在给定任何单变量指数分布(例如泊松,负二项式和指数)的情况下估算多元Markov网络。本文的主要贡献在于严格的统计分析,表明极有可能准确地恢复图形模型的邻域。我们还提供了通过我们的GLM图形模型学习到的非高斯高通量基因组网络的示例。

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