International audienceComputing the minimal polyadic decomposition (also often referred to as canonical decomposition, or sometimes Parafac) amounts to finding the global minimum of a coercive polynomial in many variables. In the case of arrays with nonnegative entries, the low-rank approximation problem is well posed. In addition, due to the large dimension of the problem, the decomposition can be rather efficiently calculated with the help of preconditioned nonlinear conjugate gradient algorithms, as subsequently shown, if equipped with an algebraic calculation of the globally optimal stepsize in low dimension. Other algorithms are also studied (gradient and quasi-Newton approaches) for comparisons. Two versions of each algorithm are cons...
In this article, we address the problem of the Canonical Polyadic decomposition (or Candecomp/Parafa...
This paper deals with the minimum polyadic decomposition of a nonnegative three-way array. The main ...
This paper surveys the use of constraints in tensor decomposition models. Constrained tensor decompo...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
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...
International audienceThis paper deals with the minimal polyadic decomposition (also known as canoni...
International audienceThis paper deals with the minimum polyadic decomposition of a nonnegative thre...
International audienceThis paper deals with the minimum polyadic decomposition of a nonnegative thre...
This paper deals with the minimal polyadic decomposition (also known as canonical decomposition or P...
5 pagesInternational audienceThe paper deals with the problem of incomplete data i.e. data with miss...
International audienceIn this communication, the problem of blind source separation in chemical anal...
5 pagesInternational audienceThe paper deals with the problem of incomplete data i.e. data with miss...
International audienceIn this communication, the problem of blind source separation in chemical anal...
In this article, we address the problem of the Canonical Polyadic decomposition (or Candecomp/Parafa...
This paper deals with the minimum polyadic decomposition of a nonnegative three-way array. The main ...
This paper surveys the use of constraints in tensor decomposition models. Constrained tensor decompo...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
International audienceComputing the minimal polyadic decomposition (also often referred to as canoni...
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...
International audienceThis paper deals with the minimal polyadic decomposition (also known as canoni...
International audienceThis paper deals with the minimum polyadic decomposition of a nonnegative thre...
International audienceThis paper deals with the minimum polyadic decomposition of a nonnegative thre...
This paper deals with the minimal polyadic decomposition (also known as canonical decomposition or P...
5 pagesInternational audienceThe paper deals with the problem of incomplete data i.e. data with miss...
International audienceIn this communication, the problem of blind source separation in chemical anal...
5 pagesInternational audienceThe paper deals with the problem of incomplete data i.e. data with miss...
International audienceIn this communication, the problem of blind source separation in chemical anal...
In this article, we address the problem of the Canonical Polyadic decomposition (or Candecomp/Parafa...
This paper deals with the minimum polyadic decomposition of a nonnegative three-way array. The main ...
This paper surveys the use of constraints in tensor decomposition models. Constrained tensor decompo...