A hypothesis test for equality of bayesian network models.

Anthony Almudevar
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引用次数: 9

Abstract

Bayesian network models are commonly used to model gene expression data. Some applications require a comparison of the network structure of a set of genes between varying phenotypes. In principle, separately fit models can be directly compared, but it is difficult to assign statistical significance to any observed differences. There would therefore be an advantage to the development of a rigorous hypothesis test for homogeneity of network structure. In this paper, a generalized likelihood ratio test based on Bayesian network models is developed, with significance level estimated using permutation replications. In order to be computationally feasible, a number of algorithms are introduced. First, a method for approximating multivariate distributions due to Chow and Liu (1968) is adapted, permitting the polynomial-time calculation of a maximum likelihood Bayesian network with maximum indegree of one. Second, sequential testing principles are applied to the permutation test, allowing significant reduction of computation time while preserving reported error rates used in multiple testing. The method is applied to gene-set analysis, using two sets of experimental data, and some advantage to a pathway modelling approach to this problem is reported.

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贝叶斯网络模型等价性的假设检验。
贝叶斯网络模型通常用于基因表达数据的建模。一些应用需要在不同表型之间对一组基因的网络结构进行比较。原则上,单独拟合的模型可以直接比较,但很难对任何观察到的差异赋予统计显著性。因此,对网络结构的同质性进行严格的假设检验将是有利的。本文提出了一种基于贝叶斯网络模型的广义似然比检验方法,利用排列重复估计显著性水平。为了在计算上可行,引入了许多算法。首先,采用Chow和Liu(1968)提出的一种近似多元分布的方法,允许最大似然度为1的最大贝叶斯网络的多项式时间计算。其次,顺序测试原则应用于排列测试,允许显著减少计算时间,同时保留在多次测试中使用的报告错误率。将该方法应用于两组实验数据的基因集分析,并报道了途径建模方法在这一问题上的一些优势。
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