多线性PARAFAC分解的封闭解

F. Roemer, M. Haardt
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引用次数: 37

摘要

本文研究了R-way平行因子分析(也称为R-way PARAFAC)问题。多路信号处理的这一分支最近受到越来越多的关注,这是由于模型的通用性以及可识别性结果表明其优于仅矩阵(2路)方法。在R-way PARAFAC分析中,目标是将r维张量分解为秩1项的最小和。到目前为止,存在次最优闭形式解以及寻找这些分解的迭代技术。然而,后者通常需要多次迭代才能收敛。在这篇贡献中,我们证明了R-way PARAFAC分解可以简化为一组同时的矩阵对角化问题。利用r维问题的结构,我们得到了每个因素的几个估计,并提出了一个“最佳匹配”方案来选择每个因素的最佳估计。通过计算机模拟,我们比较了我们的封闭形式解决方案与迭代技术,并证明了在关键情况下增强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A closed-form solution for multilinear PARAFAC decompositions
In this paper we study the R-way Parallel Factor Analysis (also referred to as R-way PARAFAC) problem. This branch of multi-way signal processing has received increased attention recently which is due to the versatility of the model as well as the identifiability results demonstrating its superiority to matrix-only (2-way) approaches. In R-way PARAFAC analysis, the goal is to decompose an R-dimensional tensor into a minimal sum of rank-1 terms. So far, there exist sub-optimal closed-form solutions as well as iterative techniques for finding these decompositions. However, the latter often require many iterations to converge. In this contribution we demonstrate that the R-way PARAFAC decomposition can be reduced to a set of simultaneous matrix diagonalization problems. Exploiting the structure of the R-dimensional problem, we obtain several estimates for each of the factors and present a "best matching" scheme to select the best estimate for each factor. By means of computer simulations we compare our closed-form solution to an iterative technique and demonstrate the enhanced robustness in critical scenarios.
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