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An efficient ADMM algorithm for high dimensional precision matrix estimation via penalized quadratic loss

机译:通过惩罚二次损耗的高维精密矩阵估计的高效ADMM算法

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摘要

The estimation of high dimensional precision matrices has been a central topic in statistical learning. However, as the number of parameters scales quadratically with the dimension p, many state-of-the-art methods do not scale well to solve problems with a very large p. In this paper, we propose a very efficient algorithm for precision matrix estimation via penalized quadratic loss functions. Under the high dimension low sample size setting, the computation complexity of our algorithm is linear in both the sample size and the number of parameters. Such a computation complexity is in some sense optimal, as it is the same as the complexity needed for computing the sample covariance matrix. Numerical studies show that our algorithm is much more efficient than other state-of-the-art methods when the dimension p is very large. (C) 2019 Elsevier B.V. All rights reserved.
机译:高维精度矩阵的估计是统计学习中的中心主题。 然而,随着参数的数量,随着维度的二次尺度,许多最先进的方法不会很好地扩展以解决非常大的p。 在本文中,我们提出了一种通过惩罚二次损耗函数提出了一种非常有效的精确矩阵估计算法。 在高尺寸低样本量设置下,我们算法的计算复杂性在样本大小和参数的数量中是线性的。 这种计算复杂性在某种意义上是最佳的,因为它与计算样本协方差矩阵所需的复杂性相同。 数值研究表明,当维度P非常大时,我们的算法比其他最先进的方法更有效。 (c)2019年Elsevier B.V.保留所有权利。

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