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FUNCTIONS PRESERVING POSITIVE DEFINITENESS FOR SPARSE MATRICES

机译:保留稀疏矩阵正定性的函数

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摘要

We consider the problem of characterizing entrywise functions that preserve the cone of positive definite matrices when applied to every off-diagonal element. Our results extend theorems of Schoenberg [Duke Math. J., 9], Rudin [Duke Math. J., 26], Christensen and Ressel [Trans. Amer. Math. Soc., 243], and others, where similar problems were studied when the function is applied to all elements, including the diagonal ones. It is shown that functions that are guaranteed to preserve positive definiteness cannot at the same time induce sparsity, i.e., set elements to zero. These results have important implications for the regularization of positive definite matrices, where functions are often applied to only the off-diagonal elements to obtain sparse matrices with better properties (e.g., Markov random field/graphical model structure, better condition number). As a particular case, it is shown that soft-thresholding, a commonly used operation in modern high-dimensional probability and statistics, is not guaranteed to maintain positive definiteness, even if the original matrix is sparse. This result has a deep connection to graphs, and in particular, to the class of trees. We then proceed to fully characterize functions which do preserve positive definiteness. This characterization is in terms of absolutely monotonic functions and turns out to be quite different from the case when the function is also applied to diagonal elements. We conclude by giving bounds on the condition number of a matrix which guarantee that the regularized matrix is positive definite.
机译:我们考虑了表征入口函数的问题,该函数在应用于每个非对角元素时会保留正定矩阵的圆锥。我们的结果扩展了Schoenberg [Duke Math。 J.,9],Rudin [Duke Math。 J.,26],Christensen和Ressel [翻译。阿米尔。数学。 Soc。,243]等,在将函数应用于所有元素(包括对角元素)时,也研究了类似的问题。结果表明,保证保留正定性的函数不能同时引起稀疏性,即将元素设置为零。这些结果对于正定矩阵的正则化具有重要意义,在正定矩阵中,函数通常仅应用于非对角元素,以获得具有更好属性(例如Markov随机场/图形模型结构,条件数更好)的稀疏矩阵。作为一个特殊情况,表明即使在原始矩阵稀疏的情况下,也不能保证软阈值(现代高维概率和统计中的常用操作)保持正定性。该结果与图,特别是与树的类别有着深厚的联系。然后,我们继续对保留正定性的函数进行完全刻画。这种表征是根据绝对单调函数进行的,并且与将该函数也应用于对角线元素的情况完全不同。通过给出矩阵条件数的界限来得出结论,该条件保证正则化矩阵是正定的。

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