Near-Linear Time and Fixed-Parameter Tractable Algorithms for Tensor Decompositions
Arvind V. Mahankali, David P. Woodruff, Ziyu Zhang

TL;DR
This paper introduces efficient algorithms for tensor decompositions, achieving near-linear time and fixed-parameter tractability, with significant improvements in approximation quality and applicability to various tensor network structures.
Contribution
It presents the first polynomial time relative error algorithms for tensor train decomposition and extends these methods to general tensor networks and fixed-parameter tractable algorithms.
Findings
Achieved a bicriteria (1 + ε)-approximation for tensor train decomposition with small rank.
Extended algorithms to tree and general tensor networks.
Developed fixed-parameter tractable algorithms for multiple tensor decompositions.
Abstract
We study low rank approximation of tensors, focusing on the tensor train and Tucker decompositions, as well as approximations with tree tensor networks and more general tensor networks. For tensor train decomposition, we give a bicriteria -approximation algorithm with a small bicriteria rank and running time, up to lower order terms, which improves over the additive error algorithm of \cite{huber2017randomized}. We also show how to convert the algorithm of \cite{huber2017randomized} into a relative error algorithm, but their algorithm necessarily has a running time of when converted to a -approximation algorithm with bicriteria rank . To the best of our knowledge, our work is the first to achieve polynomial time relative error approximation for tensor train decomposition. Our key technique…
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Taxonomy
MethodsTuckER
