On flattening of symmetric tensors and identification of latent factors

A. Koochakzadeh, P. Pal
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引用次数: 1

Abstract

This paper considers canonical polyadic (CP) decomposition of symmetric tensors of arbitrary even order. In earlier work [1], we showed that decomposition of such tensors is equivalent to solving a system of quadratic equations. As part of ongoing work, we further show that for almost all tensors, singular value decomposition of a certain matrix can uniquely obtain the solution to the system of quadratic equations. Our proposed algorithm is able to find the CP-decomposition, even in the regime where the CP-rank far exceeds the dimensions of the tensor (overcomplete tensors). We further show that using the symmetry of the tensor, it is possible to only use a certain type of flattening to significantly reduce the number of quadratic equations. Also, we show that the computational complexity can be reduced by a sketching technique, without any performance loss.
对称张量的平坦化及其潜在因素的辨识
本文研究了任意偶阶对称张量的正则多进分解。在早期的工作[1]中,我们证明了这种张量的分解等同于求解一个二次方程系统。作为正在进行的工作的一部分,我们进一步证明了对于几乎所有张量,某矩阵的奇异值分解可以唯一地获得二次方程系统的解。我们提出的算法能够找到cp -分解,即使在cp -秩远远超过张量的维数(过完备张量)的区域。我们进一步证明,利用张量的对称性,可以只使用某种类型的平坦化来显著减少二次方程的数量。此外,我们还表明,在没有任何性能损失的情况下,可以通过草图技术降低计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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