Dense tensor decompositions have been widely used in many signal processing problems including analyzing speech signals, identifying the localization of signal sources, and many other communication applications.Computing these decompositions poses major computational challenges for big datasets emerging in these domains.CANDECOMP/PARAFAC~(CP) and Tucker formulations are the prominent tensor decomposition schemes heavily used in these fields, and the algorithms for computing them involve applying two core operations, namely tensor-times-matrix~(TTM) and -vector~(TTV) multiplication, which are executed repetitively within an iterative framework.In the recent past, efficient computational schemes using a data structure called dimension tree ar...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Dense tensor decompositions have been widely used in many signal processing problems including analy...
Dense tensor decompositions have been widely used in many signal processing problems including analy...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
La factorisation des tenseurs est au coeur des méthodes d'analyse des données massives multidimensio...
La factorisation des tenseurs est au coeur des méthodes d'analyse des données massives multidimensio...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Dense tensor decompositions have been widely used in many signal processing problems including analy...
Dense tensor decompositions have been widely used in many signal processing problems including analy...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
International audienceDense tensor decompositions have been widely used in many signal processing pr...
La factorisation des tenseurs est au coeur des méthodes d'analyse des données massives multidimensio...
La factorisation des tenseurs est au coeur des méthodes d'analyse des données massives multidimensio...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...
Tensor factorization has been increasingly used to analyze high-dimensional low-rank data ofmassive ...