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Bayesian covariance matrix estimation using a mixture of decomposable graphical models

机译:混合可分解图形模型的贝叶斯协方差矩阵估计

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摘要

We present a Bayesian approach to estimating a covariance matrix by using a prior that is a mixture over all decomposable graphs, with the probability of each graph size specified by the user and graphs of equal size assigned equal probability. Most previous approaches assume that all graphs are equally probable. We show empirically that the prior that assigns equal probability over graph sizes outperforms the prior that assigns equal probability over all graphs in more efficiently estimating the covariance matrix. The prior requires knowing the number of decomposable graphs for each graph size and we give a simulation method for estimating these counts. We also present a Markov chain Monte Carlo method for estimating the posterior distribution of the covariance matrix that is much more efficient than current methods. Both the prior and the simulation method to evaluate the prior apply generally to any decomposable graphical model.
机译:我们提出一种贝叶斯方法,通过使用在所有可分解图上混合的先验来估计协方差矩阵,其中每个图大小的概率由用户指定,相等大小的图分配相同的概率。先前的大多数方法都假定所有图都是同等概率的。我们凭经验表明,在更有效地估计协方差矩阵方面,在图大小上分配相等概率的先验比在所有图上分配相等概率的先验要好。先验需要知道每个图大小的可分解图的数量,我们提供了一种估算这些计数的仿真方法。我们还提出了一种马尔可夫链蒙特卡罗方法,用于估计协方差矩阵的后验分布,该方法比当前方法有效得多。先验和评估先验的模拟方法通常都适用于任何可分解的图形模型。

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