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用于潜在变量分析的张量网络:高阶典范多adic分解

Tensor Networks for Latent Variable Analysis: Higher Order Canonical Polyadic Decomposition.

作者信息

Phan Anh-Huy, Cichocki Andrzej, Oseledets Ivan, Calvi Giuseppe G, Ahmadi-Asl Salman, Mandic Danilo P

出版信息

IEEE Trans Neural Netw Learn Syst. 2020 Jun;31(6):2174-2188. doi: 10.1109/TNNLS.2019.2929063. Epub 2019 Aug 26.

Abstract

The canonical polyadic decomposition (CPD) is a convenient and intuitive tool for tensor factorization; however, for higher order tensors, it often exhibits high computational cost and permutation of tensor entries, and these undesirable effects grow exponentially with the tensor order. Prior compression of tensor in-hand can reduce the computational cost of CPD, but this is only applicable when the rank R of the decomposition does not exceed the tensor dimensions. To resolve these issues, we present a novel method for CPD of higher order tensors, which rests upon a simple tensor network of representative inter-connected core tensors of orders not higher than 3. For rigor, we develop an exact conversion scheme from the core tensors to the factor matrices in CPD and an iterative algorithm of low complexity to estimate these factor matrices for the inexact case. Comprehensive simulations over a variety of scenarios support the proposed approach.

摘要

规范多adic分解(CPD)是一种用于张量分解的便捷且直观的工具;然而,对于高阶张量,它常常表现出高计算成本以及张量元素的排列问题,并且这些不良影响会随着张量阶数呈指数增长。对现有张量进行预先压缩可以降低CPD的计算成本,但这仅适用于分解的秩R不超过张量维度的情况。为了解决这些问题,我们提出了一种用于高阶张量CPD的新方法,该方法基于一个简单的张量网络,该网络由阶数不高于3的代表性相互连接的核心张量组成。为了严谨起见,我们开发了一种从核心张量到CPD中的因子矩阵的精确转换方案,以及一种低复杂度的迭代算法,用于在不精确情况下估计这些因子矩阵。在各种场景下的综合模拟支持了所提出的方法。

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