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This paper investigates best rank- (r 1,. . . , r d) Tucker tensor approximation of higher-order tensors arising from the discretization of linear operators and functions in ℝ d. Super-convergence of the best rank- (r 1,. . . , r d) Tucker-type decomposition with respect to the relative Frobenius norm is proven. Dimensionality reduction by the two-level Tucker-to-canonical approximation is discussed. Tensor-product representation of basic multi-linear algebra operations is considered, including inner, outer and Hadamard products. Furthermore, we focus on fast convolution of higher-order tensors represented by the Tucker/canonical models. Optimized versions of the orthogonal alternating least-squares (ALS) algorithm is presented taking into account the different formats of input data. We propose and test numerically the mixed CT-model, which is based on the additive splitting of a tensor as a sum of canonical and Tucker-type representations. It allows to stabilize the ALS iteration in the case of “ill-conditioned” tensors. The best rank- (r 1,. . . , r d) Tucker decomposition is applied to 3D tensors generated by classical potentials, for example 1{| {x - y |}}, e^ - | {x - y |}, e^{ - | {x - y | }}{| {x - y |}} and erf (|x|) {|x|} with x, y ∈ ℝ d. Numerical results for tri-linear decompositions illustrate exponential convergence in the Tucker rank, and robustness of the orthogonal ALS iteration.
Khoromskij et al. (Fri,) studied this question.
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