Higher-Order QR with Tournament Pivoting for Tensor Compression

SIAM Journal on Matrix Analysis and Applications(2023)

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摘要
We present in this paper a parallel algorithm that generates a low-rank approximation of a distributed tensor using QR decomposition with tournament pivoting (QRTP). The algorithm, which is a parallel variant of the higher-order singular value decomposition, generates factor matrices for a Tucker decomposition by applying QRTP to the unfolding matrices of a tensor distributed blockwise (by subtensor) on a set of processors. For each unfolding mode the algorithm logically reorganizes (unfolds) the processors so that the associated unfolding matrix has a suitable logical distribution. We also establish error bounds between a tensor and the compressed version of the tensor generated by the algorithm.
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关键词
tensor compression,tournament pivoting,higher-order
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