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Mode-wise Tensor Decompositions: Multi-dimensional Generalizations of CUR Decompositions

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arxiv 2103.11037 v2 pith:L4ORAHFD submitted 2021-03-19 math.NA cs.ITcs.LGcs.NAeess.IVmath.IT

Mode-wise Tensor Decompositions: Multi-dimensional Generalizations of CUR Decompositions

classification math.NA cs.ITcs.LGcs.NAeess.IVmath.IT
keywords tensorapproximationsdecompositionsrankmultilinearsamplingadvantageadversarial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Low rank tensor approximation is a fundamental tool in modern machine learning and data science. In this paper, we study the characterization, perturbation analysis, and an efficient sampling strategy for two primary tensor CUR approximations, namely Chidori and Fiber CUR. We characterize exact tensor CUR decompositions for low multilinear rank tensors. We also present theoretical error bounds of the tensor CUR approximations when (adversarial or Gaussian) noise appears. Moreover, we show that low cost uniform sampling is sufficient for tensor CUR approximations if the tensor has an incoherent structure. Empirical performance evaluations, with both synthetic and real-world datasets, establish the speed advantage of the tensor CUR approximations over other state-of-the-art low multilinear rank tensor approximations.

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