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Volume regularized non-negative matrix factorizations

机译:卷正则化非负矩阵因子

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摘要

This work considers two volume regularized non-negative matrix factorization (NMF) problems that decompose a nonnegative matrix X into the product of two nonnegative matrices W and H with a regularization on the volume of the convex hull spanned by the columns of W. This regularizer takes two forms: the determinant (det) and logarithm of the determinant (logdet) of the Gramian of W. In this paper, we explore the structure of these problems and present several algorithms, including a new algorithm based on an eigenvalue upper bound of the logdet function. Experimental results on synthetic data show that (i) the new algorithm is competitive with the standard Taylor bound, and (ii) the logdet regularizer works better than the det regularizer. We also illustrate the applicability of the new algorithm on the San Diego airport hyperspectral image.
机译:这项工作考虑了两个卷正则化的非负矩阵分解(NMF)问题,其将非负矩阵x分解为两个非负矩阵W和H的乘积,其中凸船的音量上由W.该规范器跨越的凸船的音量采用两种形式:W的决定因素(DEC)和对数的W.本文探讨了这些问题的结构并呈现了几种算法,包括基于特征值上限的新算法logdet函数。合成数据的实验结果表明,(i)新算法与标准泰勒绑定竞争,(ii)Logdet规范器比Det规范器更好。我们还说明了新算法在圣地亚哥机场高光谱图像上的适用性。

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