Efficient and accurate low-rank approximation (LRA) methods are of great significance for large-scale data analysis. Randomized tensor decompositions have emerged as powerful tools to meet this need, but most existing methods perform poorly in the presence of noise interference. Inspired by the remarkable performance of randomized block Krylov iteration (rBKI) in reducing the effect of tail singular values, this work designs an rBKI-based Tucker decomposition (rBKI-TK) for accurate approximation, together with a hierarchical tensor ring decomposition based on rBKI-TK for efficient compression of large-scale data. Besides, the error bound between the deterministic LRA and the randomized LRA is studied. Numerical experiences demonstrate the e...
Approximating high order tensors by low Tucker-rank tensors have applications in psychometrics, chem...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
Sketching is a randomized dimensionalityreduction method that aims to preserve relevant information ...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
Recent papers have developed alternating least squares (ALS) methods for CP and tensor ring decompos...
Submitted to SIAM Journal on Scientific ComputingComputing low-rank approximations is one of the mos...
Abstract. We consider Tucker-like approximations with an r × r × r core tensor for three-dimensional...
L’approximation tensorielle de rang faible joue ces dernières années un rôle importantdans plusieurs...
We propose a new algorithm for the computation of a singular value decomposition (SVD) low-rank appr...
© 2015 IEEE. For the analysis of large-scale datasets one often assumes simple structures. In the ca...
We present a new algorithm for incrementally updating the tensor-train decomposition of a stream of ...
First published in the Proceedings of the 25th European Signal Processing Conference (EUSIPCO-2017) ...
Abstract—Nonnegative Tucker Decomposition (NTD) is a pow-erful tool to extract nonnegative parts-bas...
We present in this paper a parallel algorithm that generates a low-rank approximation of a distribut...
Approximating high order tensors by low Tucker-rank tensors have applications in psychometrics, chem...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
Sketching is a randomized dimensionalityreduction method that aims to preserve relevant information ...
Tensor CANDECOMP/PARAFAC (CP) decomposition has wide applications in statistical learning of latent ...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
Recent papers have developed alternating least squares (ALS) methods for CP and tensor ring decompos...
Submitted to SIAM Journal on Scientific ComputingComputing low-rank approximations is one of the mos...
Abstract. We consider Tucker-like approximations with an r × r × r core tensor for three-dimensional...
L’approximation tensorielle de rang faible joue ces dernières années un rôle importantdans plusieurs...
We propose a new algorithm for the computation of a singular value decomposition (SVD) low-rank appr...
© 2015 IEEE. For the analysis of large-scale datasets one often assumes simple structures. In the ca...
We present a new algorithm for incrementally updating the tensor-train decomposition of a stream of ...
First published in the Proceedings of the 25th European Signal Processing Conference (EUSIPCO-2017) ...
Abstract—Nonnegative Tucker Decomposition (NTD) is a pow-erful tool to extract nonnegative parts-bas...
We present in this paper a parallel algorithm that generates a low-rank approximation of a distribut...
Approximating high order tensors by low Tucker-rank tensors have applications in psychometrics, chem...
Robust tensor CP decomposition involves decomposing a tensor into low rank and sparse components. We...
Sketching is a randomized dimensionalityreduction method that aims to preserve relevant information ...