Tensors are multi-way arrays, and the CANDECOMP/PARAFAC (CP) tensor factorization has found application in many different domains. The CP model is typically fit using a least squares objective function, which is a maximum likelihood estimate under the assumption of independent and identically distributed (i.i.d.) Gaussian noise. We demonstrate that this loss function can be highly sensitive to non-Gaussian noise. Therefore, we propose a loss function based on the 1-norm because it can accommodate both Gaussian and grossly non-Gaussian perturbations. We also present an alternating majorization-minimization (MM) algorithm for fitting a CP model using our proposed loss function (CPAL1) and compare its performance to the workhorse algorithm for...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
The RPCA model has achieved good performances in various applications. However, two defects limit it...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
Because of the limitations of matrix factorization, such as losing spatial structure information, th...
Because of the limitations of matrix factorization, such as losing spatial structure information, th...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Tensor decompositions are higher-order analogues of matrix decompositions and have proven to be powe...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
Abstract—Parallel factor (PARAFAC) analysis is an extension of low-rank matrix decomposition to high...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
The RPCA model has achieved good performances in various applications. However, two defects limit it...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
The low-rank tensor factorization (LRTF) technique has received increasing attention in many compute...
Because of the limitations of matrix factorization, such as losing spatial structure information, th...
Because of the limitations of matrix factorization, such as losing spatial structure information, th...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Tensor decompositions are higher-order analogues of matrix decompositions and have proven to be powe...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
Abstract—Parallel factor (PARAFAC) analysis is an extension of low-rank matrix decomposition to high...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
International audienceThe Canonical Polyadic tensor decomposition (CPD), also known as Candecomp/Par...
The RPCA model has achieved good performances in various applications. However, two defects limit it...