International audienceCanonical Polyadic Decomposition (CPD), also known as PARAFAC, is a useful tool for tensor factorization. It has found application in several domains including signal processing and data mining. With the deluge of data faced in our societies, large-scale matrix and tensor factorizations become a crucial issue. Few works have been devoted to large-scale tensor factorizations. In this paper, we introduce a fully distributed method to compute the CPD of a large-scale data tensor across a network of machines with limited computation resources. The proposed approach is based on collaboration between the machines in the network across the three modes of the data tensor. Such a multi-modal collaboration allows an essentially ...
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 ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
International audienceCanonical Polyadic Decomposition (CPD), also known as PARAFAC, is a useful too...
Canonical Polyadic Decomposition (CPD), also known as PARAFAC, is a useful tool for tensor factoriza...
International audienceIn this paper, we consider the issue of distributed computation of tensor deco...
Abstract—Tensors are data structures indexed along three or more dimensions. Tensors have found incr...
Tensors are data structures indexed along three or more dimensions. Tensors have found increasing us...
Abstract—Given a high-dimensional and large-scale tensor, how can we decompose it into latent factor...
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 ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
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 ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
International audienceCanonical Polyadic Decomposition (CPD), also known as PARAFAC, is a useful too...
Canonical Polyadic Decomposition (CPD), also known as PARAFAC, is a useful tool for tensor factoriza...
International audienceIn this paper, we consider the issue of distributed computation of tensor deco...
Abstract—Tensors are data structures indexed along three or more dimensions. Tensors have found incr...
Tensors are data structures indexed along three or more dimensions. Tensors have found increasing us...
Abstract—Given a high-dimensional and large-scale tensor, how can we decompose it into latent factor...
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 ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
International audienceModeling multidimensional data using tensor models, in particular through the ...
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 ...
International audienceModeling multidimensional data using tensor models, in particular through the ...