Stochastic Iterative Hard Thresholding for Low-Tucker-Rank Tensor Recovery

Rachel Grotheer, S. Li, A. Ma, D. Needell, Jing Qin
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引用次数: 3

Abstract

Low-rank tensor recovery problems have been widely studied in many signal processing and machine learning applications. Tensor rank is typically defined under certain tensor decomposition. In particular, Tucker decomposition is known as one of the most popular tensor decompositions. In recent years, researchers have developed many state-of-the-art algorithms to address the problem of low-Tucker-rank tensor recovery. Motivated by the favorable properties of the stochastic algorithms, such as stochastic gradient descent and stochastic iterative hard thresholding, we aim to extend the stochastic iterative hard thresholding algorithm from vectors to tensors in order to address the problem of recovering a low-Tucker-rank tensor from its linear measurements. We have also developed linear convergence analysis for the proposed method and conducted a series of experiments with both synthetic and real data to illustrate the performance of the proposed method.
低阶张量恢复的随机迭代硬阈值
低秩张量恢复问题在许多信号处理和机器学习应用中得到了广泛的研究。张量秩通常是在一定的张量分解下定义的。特别地,Tucker分解被认为是最流行的张量分解之一。近年来,研究人员开发了许多最先进的算法来解决低塔克秩张量恢复问题。基于随机梯度下降和随机迭代硬阈值等随机算法的优点,我们的目标是将随机迭代硬阈值算法从向量扩展到张量,以解决从线性测量中恢复低塔克秩张量的问题。我们还对所提出的方法进行了线性收敛分析,并对合成数据和实际数据进行了一系列实验,以说明所提出方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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