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arxiv:2510.18627

Multi-subspace power method for decomposing all tensors

Published on Oct 21, 2025
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Abstract

A tensor decomposition algorithm generalizing the subspace power method to all tensor symmetries, utilizing orthonormal slices and pSVTs for improved accuracy and efficiency.

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We present an algorithm for decomposing low rank tensors of any symmetry type, from fully asymmetric to fully symmetric. It generalizes the recent subspace power method from symmetric tensors to all tensors. The algorithm transforms an input tensor into a tensor with orthonormal slices. We show that for tensors with orthonormal slices and low rank, the summands of their decomposition are in one-to-one correspondence with the partially symmetric singular vector tuples (pSVTs) with singular value one. We use this to show correctness of the algorithm. We introduce a shifted power method for computing pSVTs and establish its global convergence. Numerical experiments demonstrate that our decomposition algorithm achieves higher accuracy and faster runtime than existing methods.

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