Today, compact and reduced data representations using low rank data approximation are common to represent high-dimensional data sets in many application areas as for example genomics, multimedia, quantum chemistry, social networks or visualization. In order to produce such low rank data representations, the input data is typically approximated by so-called alternating least squares (ALS) algorithms. However, not all of these ALS algorithms are guaranteed to converge. To address this issue, we suggest a new algorithm for the computation of a best rank one approximation of tensors, called alternating singular value decomposition. This method is based on the computation of maximal singular values and the corresponding singular vectors of matri...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
CP decomposition (CPD) is prevalent in chemometrics, signal processing, data mining and many more fi...
International audienceIn this paper, we show that a general quadratic multivariate system in the rea...
In this paper we suggest a new algorithm for the computation of a best rank one approximation of ten...
Tensor decomposition has important applications in various disciplines, but it re-mains an extremely...
Abstract. With the notable exceptions of two cases — that tensors of order 2, namely, matrices, alwa...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
In this paper we suggest a new algorithm for the computation of a best rank one approximation of ten...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
CP decomposition (CPD) is prevalent in chemometrics, signal processing, data mining and many more fi...
International audienceIn this paper, we show that a general quadratic multivariate system in the rea...
In this paper we suggest a new algorithm for the computation of a best rank one approximation of ten...
Tensor decomposition has important applications in various disciplines, but it re-mains an extremely...
Abstract. With the notable exceptions of two cases — that tensors of order 2, namely, matrices, alwa...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
In this paper we suggest a new algorithm for the computation of a best rank one approximation of ten...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The singular value decomposition is among the most important algebraic tools for solving many approx...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
CP decomposition (CPD) is prevalent in chemometrics, signal processing, data mining and many more fi...
International audienceIn this paper, we show that a general quadratic multivariate system in the rea...