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Bayesian precision and covariance matrix estimation for graphical Gaussian models with edge and vertex symmetries

机译:具有边缘和顶点对称的图形高斯模型的贝叶斯精度和协方差矩阵

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Graphical Gaussian models with edge and vertex symmetries were introduced by Hojsgaard & Lauritzen (2008), who gave an algorithm for computing the maximum likelihood estimate of the precision matrix for such models. In this paper, we take a Bayesian approach to its estimation. We consider only models with symmetry constraints and which thus form a natural exponential family with the precision matrix as the canonical parameter. We identify the Diaconis-Ylvisaker conjugate prior for these models, develop a scheme to sample from the prior and posterior distributions, and thus obtain estimates of the posterior mean of the precision and covariance matrices. Such a sampling scheme is essential for model selection in coloured graphical Gaussian models. In order to verify the precision of our estimates, we derive an analytic expression for the expected value of the precision matrix when the graph underlying our model is a tree, a complete graph on three vertices, or a decomposable graph on four vertices with various symmetries, and we compare our estimates with the posterior mean of the precision matrix and the expected mean of the coloured graphical Gaussian model, that is, of the covariance matrix. We also verify the accuracy of our estimates on simulated data.
机译:Hojsgaard&Lauritzen(2008)引入了具有边缘和顶点对称的图形高斯模型,用于计算这种模型的精确矩阵的最大似然估计算法。在本文中,我们采取了贝叶斯方法来估算。我们仅考虑具有对称性约束的模型,从而形成具有精密矩阵作为规范参数的自然指数家庭。我们在这些模型之前识别DiaConis-YlviSaker缀合物,从前分布开发出样品的方案,从而获得精度和协方差矩阵的后叶片的估计。这种采样方案对于彩色图形高斯模型中的模型选择是必不可少的。为了验证我们的估计的精度,当我们的模型的图形是树的图形是树,三个顶点上的完整图形,或者在具有各种对称的四个顶点上的完整图表时,我们导出了精确矩阵的预期值的分析表达式。 ,我们将估计与精密矩阵的后序和预期的图形高斯模型的预期平均值进行比较,即协方差矩阵。我们还验证了我们对模拟数据的估计的准确性。

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