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Sparse Inverse Covariance Selection via Alternating Linearization Methods

机译:交替线性化方法的稀疏逆协方差选择

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Gaussian graphical models are of great interest in statistical learning. Because the conditional independencies between different nodes correspond to zero entries in the inverse covariance matrix of the Gaussian distribution, one can learn the structure of the graph by estimating a sparse inverse covariance matrix from sample data, by solving a convex maximum likelihood problem with an e_1 -regularization term. In this paper, we propose a first-order method based on an alternating linearization technique that exploits the problem's special structure; in particular, the subproblems solved in each iteration have closed-form solutions. Moreover, our algorithm obtains an ∈-opdmal solution in O(1/∈) iterations. Numerical experiments on both synthetic and real data from gene association networks show that a practical version of this algorithm outperforms other competitive algorithms.
机译:高斯图形模型对统计学习非常感兴趣。由于不同节点之间的条件独立性对应于高斯分布逆协方差矩阵中的零项,因此可以通过用e_1求解凸最大似然问题,根据样本数据估算稀疏逆协方差矩阵,从而学习图的结构。 -正规化术语。在本文中,我们提出了一种基于交替线性化技术的一阶方法,该方法利用了问题的特殊结构。特别是,在每次迭代中解决的子问题都具有封闭形式的解决方案。此外,我们的算法在O(1 /∈)迭代中获得了∈最优解。对来自基因关联网络的合成和真实数据进行的数值实验表明,该算法的实际版本优于其他竞争算法。

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