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Fast Bayesian inference in large Gaussian graphical models

机译:大高斯图形模型中快速贝叶斯推断

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摘要

Abstract Despite major methodological developments, Bayesian inference in Gaussian graphical models remains challenging in high dimension due to the tremendous size of the model space. This article proposes a method to infer the marginal and conditional independence structures between variables by multiple testing, which bypasses the exploration of the model space. Specifically, we introduce closed‐form Bayes factors under the Gaussian conjugate model to evaluate the null hypotheses of marginal and conditional independence between variables. Their computation for all pairs of variables is shown to be extremely efficient, thereby allowing us to address large problems with thousands of nodes as required by modern applications. Moreover, we derive exact tail probabilities from the null distributions of the Bayes factors. These allow the use of any multiplicity correction procedure to control error rates for incorrect edge inclusion. We demonstrate the proposed approach on various simulated examples as well as on a large gene expression data set from The Cancer Genome Atlas.
机译:摘要尽管有重大的方法论发展,由于模型空间的巨大尺寸,高斯图形模型中的贝叶斯推断在高度方面仍然具有挑战性。本文提出了一种通过多次测试推断变量之间的边缘和条件独立结构的方法,该方法绕过了模型空间的探索。具体而言,我们在高斯共轭模型下引入封闭形式的贝叶因子因子,以评估变量之间边缘和条件独立性的零假设。它们对所有成对变量的计算被认为是非常有效的,从而允许我们根据现代应用要求满足数千个节点的大问题。此外,我们从贝叶斯因子的NULL分布中获得了精确的尾部概率。这些允许使用任何多重校正过程来控制错误速率的错误率。我们展示了各种模拟实例的提出方法以及从癌症基因组图集组合的大型基因表达数据。

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