Efficient Tensor Decomposition via Moment Matrix Extension
Bobby Shi, Julia Lindberg, Joe Kileel

TL;DR
This paper enhances the efficiency of the moment matrix extension algorithm for symmetric tensor CP decomposition, especially for order-4 tensors, by analyzing regularity conditions and providing new theoretical and computational insights.
Contribution
It introduces conditions under which the moment matrix extension algorithm becomes efficient, extends results to higher tensor ranks, and offers explicit parameterizations for certain tensor classes.
Findings
Efficient tensor decomposition for tensors with low regularity.
Decomposition of generic order-4 tensors up to rank 2n+1.
Explicit parameterization of monomial tensor decompositions.
Abstract
Motivated by a flurry of recent work on efficient tensor decomposition algorithms, we show that the celebrated moment matrix extension algorithm of Brachat, Comon, Mourrain, and Tsigaridas for symmetric tensor canonical polyadic (CP) decomposition can be made efficient under the right conditions. We first show that the crucial property determining the complexity of the algorithm is the regularity of a target decomposition. This allows us to reduce the complexity of the vanilla algorithm, while also unifying results from previous works. We then show that for tensors in with even, low enough regularity can reduce finding a symmetric tensor decomposition to solving a system of linear equations. For order- tensors we prove that generic tensors of rank up to can be decomposed efficiently via moment matrix extension, exceeding the rank threshold allowed…
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Taxonomy
TopicsTensor decomposition and applications · Model Reduction and Neural Networks · Matrix Theory and Algorithms
