On the Role of Sampling in Underdetermined Tensor Decomposition with Kronecker and Khatri-Rao Structured Factors

Mehmet Can Hücümenoğlu, P. Pal
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Abstract

This paper introduces the problem of learning Khatri- Rao structured dictionaries for tensor data, which is inspired from the CANDECOMP/PARAFAC decomposition of tensors. Unlike Kronecker-structured dictionaries which have recently been shown to be locally identifiable under a separable sparsity assumption on coefficient vectors, we show that Khatri-Rao dic tionaries are globally identifiable for arbitrary sparsity patterns. We provide the expected sample complexity to learn Khatri-Rao structured dictionaries and conduct numerical experiments which agree with the theoretical results.
基于Kronecker和Khatri-Rao结构因子的欠定张量分解中抽样的作用
本文介绍了张量数据的Khatri- Rao结构化字典的学习问题,该问题的灵感来自于张量的CANDECOMP/PARAFAC分解。与kronecker结构字典不同,kronecker结构字典最近被证明在系数向量的可分离稀疏假设下是局部可识别的,我们证明了Khatri-Rao dic字典对于任意稀疏模式是全局可识别的。我们提供了学习Khatri-Rao结构字典的期望样本复杂度,并进行了与理论结果一致的数值实验。
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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