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Sufficient recovery conditions for noise-buried low rank tensors
Published 4 Dec 2023 in math.NA and cs.NA | (2312.02088v2)
Abstract: Low-rank tensor approximation error bounds are proposed for the case of noisy input data that depend on low-rank representation type, rank and the dimensionality of the tensor. The bounds show that high-dimensional low-rank structured approximations provide superior noise-filtering properties compared to matrices with the same rank and total element count.
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