Reconstruction Algorithms for Low-Rank Tensors and Depth-3 Multilinear Circuits
Vishwas Bhargava, Shubhangi Saraf, Ilya Volkovich

TL;DR
This paper introduces new efficient algorithms for reconstructing certain depth-3 arithmetic circuits, enabling the first polynomial-time solutions for tensor rank computation and optimal tensor decomposition for specific classes of tensors.
Contribution
It provides the first efficient algorithms for tensor rank and decomposition for classes like set-multilinear, symmetric, and multilinear depth-3 circuits of constant top fan-in.
Findings
First polynomial-time algorithm for tensor rank of constant-rank tensors.
Efficient algorithms for tensor decomposition of symmetric tensors.
Extension of algorithms to multilinear depth-3 circuits over large fields.
Abstract
We give new and efficient black-box reconstruction algorithms for some classes of depth- arithmetic circuits. As a consequence, we obtain the first efficient algorithm for computing the tensor rank and for finding the optimal tensor decomposition as a sum of rank-one tensors when then input is a constant-rank tensor. More specifically, we provide efficient learning algorithms that run in randomized polynomial time over general fields and in deterministic polynomial time over the reals and the complex numbers for the following classes: (1) Set-multilinear depth- circuits of constant top fan-in circuits). As a consequence of our algorithm, we obtain the first polynomial time algorithm for tensor rank computation and optimal tensor decomposition of constant-rank tensors. This result holds for dimensional tensors for any , but is…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Machine Learning and Algorithms · Tensor decomposition and applications
