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Iterative Thresholding Algorithm for Sparse Inverse Covariance Estimation

机译:稀疏逆协方差估计的迭代阈值算法

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The ℓ_1 -regularized maximum likelihood estimation problem has recently become a topic of great interest within the machine learning, statistics, and optimization communities as a method for producing sparse inverse covariance estimators. In this paper, a proximal gradient method (G-ISTA) for performing ℓ_1-regularized covariance matrix estimation is presented. Although numerous algorithms have been proposed for solving this problem, this simple proximal gradient method is found to have attractive theoretical and numerical properties. G-ISTA has a linear rate of convergence, resulting in an O(loge) iteration complexity to reach a tolerance of ε. This paper gives eigenvalue bounds for the G-ISTA iterates, providing a closed-form linear convergence rate. The rate is shown to be closely related to the condition number of the optimal point. Numerical convergence results and timing comparisons for the proposed method are presented. G-ISTA is shown to perform very well, especially when the optimal point is well-conditioned.
机译:作为产生稀疏逆协方差估计器的一种方法,the_1正则化的最大似然估计问题最近已成为机器学习,统计和优化团体中非常感兴趣的话题。本文提出了一种用于执行ℓ_1正则化协方差矩阵估计的近端梯度法(G-ISTA)。尽管已经提出了许多算法来解决该问题,但是发现这种简单的近端梯度法具有有吸引力的理论和数值特性。 G-ISTA具有线性收敛速度,从而导致O(loge)迭代复杂度达到ε的容差。本文给出了G-ISTA迭代的特征值边界,提供了封闭形式的线性收敛速度。显示该速率与最佳点的条件数密切相关。给出了数值收敛结果和时序比较。 G-ISTA被证明表现出色,尤其是在最佳点条件良好的情况下。

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