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A permutation-based Bayesian approach for inverse covariance estimation

机译:一种基于逆协方差估计的偏置贝叶斯方法

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摘要

Covariance estimation and selection for multivariate datasets in a high-dimensional regime is a fundamental problem in modern statistics. Gaussian graphical models are a popular class of models used for this purpose. Current Bayesian methods for inverse covariance matrix estimation under Gaussian graphical models require the underlying graph and hence the ordering of variables to be known. However, in practice, such information on the true underlying model is often unavailable. We therefore propose a novel permutation-based Bayesian approach to tackle the unknown variable ordering issue. In particular, we utilize multiple maximum a posteriori estimates under the DAG-Wishart prior for each permutation, and subsequently construct the final estimate of the inverse covariance matrix. The proposed estimator has smaller variability and yields order-invariant property. We establish posterior convergence rates under mild assumptions and illustrate that our method outperforms existing approaches in estimating the inverse covariance matrices via simulation studies.
机译:高维制度中多变量数据集的协方差估计和选择是现代统计中的基本问题。高斯图形模型是一种用于此目的的流行模型。当前贝叶斯矩阵的逆协方差矩阵估计在高斯图形模型下需要底层图,因此知道变量的排序。但是,在实践中,关于真正的底层模型的信息通常是不可用的。因此,我们提出了一种新的基于排列的贝叶斯方法来解决未知的变量排序问题。特别地,我们在每个置换之前利用DAG-Wishart下的多个后验估计,随后构造反协方差矩阵的最终估计。所提出的估计器具有较小的变异性和收益率订单不变性。我们在温和的假设下建立后部收敛速率,并说明我们的方法优于通过模拟研究估计逆协方差矩阵的现有方法。

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