Rapport interne de GIPSA-labBecause of the attractiveness of the canonical polyadic (CP) tensor decomposition in various applications, several algorithms have been designed to compute it, but efficient ones are still lacking. Iterative deflation algorithms based on successive rank-1 approximations can be used to perform this task, since the latter are rather easy to compute. We first present an algebraic rank-1 approximation method that performs better than the standard higher-order singular value decomposition (HOSVD) for three-way tensors. Second, we propose a new iterative rank-1 approximation algorithm that improves any other rank-1 approximation method. Third, we describe a geometric framework allowing to study the convergence o...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
International audienceThis paper deals with the minimal polyadic decomposition (also known as canoni...
In many applications signals or data vary with respect to several parameters (such as spatial coord...
International audienceThe Canonical Polyadic (CP) tensor decomposition has become an attractive mat...
more details in : hal-00490248The Canonical Polyadic (CP) decomposition of a tensor is difficult to ...
International audienceThe Canonical Polyadic (CP) tensor decomposition has become an attractive mat...
L’approximation tensorielle de rang faible joue ces dernières années un rôle importantdans plusieurs...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
Canonical Polyadic (CP) tensor decomposition is useful in many real-world applications due to its un...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
International audienceIt is proposed to isolate the computation of the scaling matrix in CP tensor d...
Les tenseurs sont une généralisation d'ordre supérieur des matrices. Ils apparaissent dans une myria...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
International audienceThis paper deals with the minimal polyadic decomposition (also known as canoni...
In many applications signals or data vary with respect to several parameters (such as spatial coord...
International audienceThe Canonical Polyadic (CP) tensor decomposition has become an attractive mat...
more details in : hal-00490248The Canonical Polyadic (CP) decomposition of a tensor is difficult to ...
International audienceThe Canonical Polyadic (CP) tensor decomposition has become an attractive mat...
L’approximation tensorielle de rang faible joue ces dernières années un rôle importantdans plusieurs...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
International audienceWe propose a non iterative algorithm, called SeROAP (Sequential Rank-One Appro...
Canonical Polyadic (CP) tensor decomposition is useful in many real-world applications due to its un...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
International audienceIt is proposed to isolate the computation of the scaling matrix in CP tensor d...
Les tenseurs sont une généralisation d'ordre supérieur des matrices. Ils apparaissent dans une myria...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
International audienceThis paper deals with the minimal polyadic decomposition (also known as canoni...
In many applications signals or data vary with respect to several parameters (such as spatial coord...