Tensor rank decomposition is a useful tool for geometric interpretation of the tensors in the canonical tensor model (CTM) of quantum gravity. In order to understand the stability of this interpretation, it is important to be able to estimate how many tensor rank decompositions can approximate a given tensor. More precisely, finding an approximate symmetric tensor rank decomposition of a symmetric tensor Q with an error allowance Δ is to find vectors ϕi satisfying ∥Q−∑i=1Rϕi⊗ϕi⋯⊗ϕi∥2≤Δ. The volume of all such possible ϕi is an interesting quantity which measures the amount of possible decompositions for a tensor Q within an allowance. While it would be difficult to evaluate this quantity for each Q, we find an explicit formula for a similar...
Given a tensor f in a Euclidean tensor space, we are interested in the critical points of the distan...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...
The tensor rank decomposition problem consists of recovering the unique parameters of the decomposit...
In applications, one rarely works with tensors that admit an exact low-rank tensor decomposition due...
The tensor rank decomposition problem consists of recovering the unique parameters of the decomposit...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
The tensor rank decomposition is a decomposition of a tensor into a linear combination of rank-1 ten...
In this work we study different notions of ranks and approximation of tensors. We consider the tenso...
The tensor rank decomposition or CPD expresses a tensor as a minimum-length linear combination of el...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
AbstractIt has been shown that a best rank-R approximation of an order-k tensor may not exist when R...
Given a tensor f in a Euclidean tensor space, we are interested in the critical points of the distan...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...
The tensor rank decomposition problem consists of recovering the unique parameters of the decomposit...
In applications, one rarely works with tensors that admit an exact low-rank tensor decomposition due...
The tensor rank decomposition problem consists of recovering the unique parameters of the decomposit...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
International audienceThis paper deals with the problem of Canonical Polyadic (CP) decomposition of ...
The tensor rank decomposition is a decomposition of a tensor into a linear combination of rank-1 ten...
In this work we study different notions of ranks and approximation of tensors. We consider the tenso...
The tensor rank decomposition or CPD expresses a tensor as a minimum-length linear combination of el...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
AbstractIt has been shown that a best rank-R approximation of an order-k tensor may not exist when R...
Given a tensor f in a Euclidean tensor space, we are interested in the critical points of the distan...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...
In this paper, we propose three new tensor decompositions for even-order tensors correspond-ing resp...