一种新的流张量块项分解张量跟踪算法

Thanh Trung LE, K. Abed-Meraim, P. Ravier, O. Buttelli
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引用次数: 0

摘要

块项分解(block -term decomposition, BTD)是一种将张量(又称多向数组)分解为低秩块分量的方法,是一种强大的多维高维数据分析处理工具。在本文中,我们提出了一种新的张量跟踪方法,称为SBTD,用于在BTD格式下分解来自多维数据流的张量。由于交替优化框架,SBTD首先应用正则化最小二乘求解器来估计底层流张量的时间因子。然后,SBTD采用自适应滤波器,通过最小化加权最小二乘代价函数来跟踪非时间张量因子随时间的变化。数值实验表明,与现有的BTD算法相比,SBTD算法具有较好的张量跟踪性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Tensor Tracking Algorithm for Block-Term Decomposition of Streaming Tensors
Block-term decomposition (BTD), which factorizes a tensor (aka a multiway array) into block components of low rank, has been a powerful processing tool for multivariate and high-dimensional data analysis. In this paper, we propose a novel tensor tracking method called SBTD for factorizing tensors derived from multidimensional data streams under the BTD format. Thanks to the alternating optimization framework, SBTD first applies a regularized least-squares solver to estimate the temporal factor of the underlying streaming tensor. Then, SBTD adopts an adaptive filter to track the non-temporal tensor factors over time by minimizing a weighted least-squares cost function. Numerical experiments indicate that SBTD is capable of tensor tracking with competitive performance compared to the state-of-the-art BTD algorithms.
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