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Covariance Estimation in Decomposable Gaussian Graphical Models

机译:可分解高斯图形模型中的协方差估计

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摘要

Graphical models are a framework for representing and exploiting prior conditional independence structures within distributions using graphs. In the Gaussian case, these models are directly related to the sparsity of the inverse covariance (concentration) matrix and allow for improved covariance estimation with lower computational complexity. We consider concentration estimation with the mean-squared error (MSE) as the objective, in a special type of model known as decomposable. This model includes, for example, the well known banded structure and other cases encountered in practice. Our first contribution is the derivation and analysis of the minimum variance unbiased estimator (MVUE) in decomposable graphical models. We provide a simple closed form solution to the MVUE and compare it with the classical maximum likelihood estimator (MLE) in terms of performance and complexity. Next, we extend the celebrated Stein's unbiased risk estimate (SURE) to graphical models. Using SURE, we prove that the MSE of the MVUE is always smaller or equal to that of the biased MLE, and that the MVUE itself is dominated by other approaches. In addition, we propose the use of SURE as a constructive mechanism for deriving new covariance estimators. Similarly to the classical MLE, all of our proposed estimators have simple closed form solutions but result in a significant reduction in MSE.
机译:图形模型是一个框架,用于使用图形表示和利用分布内的先前条件独立性结构。在高斯情况下,这些模型与逆协方差(浓度)矩阵的稀疏度直接相关,并允许以较低的计算复杂度改进协方差估计。在一种称为可分解的特殊类型的模型中,我们考虑以均方误差(MSE)为目标的浓度估算。该模型包括,例如,众所周知的带状结构和实践中遇到的其他情况。我们的第一项贡献是在可分解图形模型中推导和分析最小方差无偏估计量(MVUE)。我们为MVUE提供了一种简单的封闭式解决方案,并将其与经典的最大似然估计器(MLE)在性能和复杂性方面进行了比较。接下来,我们将著名的斯坦因的无偏风险估计(SURE)扩展到图形模型。使用SURE,我们证明MVUE的MSE始终小于或等于偏置MLE的MSE,并且MVUE本身受其他方法的控制。此外,我们建议使用SURE作为推导新协方差估计量的构造机制。与经典MLE相似,我们提出的所有估计量都具有简单的封闭形式解,但是导致MSE显着降低。

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