International audienceSymmetric Tensor Decomposition is a major problem that arises in areas such as signal processing, statistics, data analysis and computational neuroscience. It is equivalent to write a homogeneous polynomial in n variables of degree D as a sum of D-th powers of linear forms, using the minimal number of summands. This minimal number is called the rank of the polynomial/tensor. We consider the decomposition of binary forms, that corresponds to the decomposition of symmetric tensors of dimension 2 and order D. This problem has its roots in Invariant Theory, where the decom-positions are known as canonical forms. As part of that theory, different algorithms were proposed for the binary forms. In recent years, those algorith...
International audienceWe consider two models: simultaneous CP decomposition of several symmetric ten...
We consider the NP-hard problem of approximating a tensor with binary entries by a rank-one tensor, ...
Tensors are higher order generalization of matrices. They appear in a myriad of applications. The te...
Accepted to JSCSymmetric tensor decomposition is an important problem with applications in several a...
International audienceWe present an algorithm for decomposing a symmetric tensor, of dimension n and...
AbstractWe present an algorithm for decomposing a symmetric tensor, of dimension n and order d, as a...
Tensor rank and low-rank tensor decompositions have many applications in learning and complexity the...
special session "Tensor Computations in Linear and Multilinear Algebra"Tensor decompositions permit ...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
The Waring Problem over polynomial rings asks how to decompose a homogeneous polynomial p of degree ...
International audienceWe use an algebraic approach to construct minimal decompositions of symmetric ...
We study the decomposition of multivariate polynomials as sums of powers of linear forms. We give a ...
We develop the first fast spectral algorithm to decompose a random third-order tensor over $\mathbb{...
We propose a constructive algorithm that decomposes an arbitrary real tensor into a finite sum of or...
International audienceWe consider two models: simultaneous CP decomposition of several symmetric ten...
We consider the NP-hard problem of approximating a tensor with binary entries by a rank-one tensor, ...
Tensors are higher order generalization of matrices. They appear in a myriad of applications. The te...
Accepted to JSCSymmetric tensor decomposition is an important problem with applications in several a...
International audienceWe present an algorithm for decomposing a symmetric tensor, of dimension n and...
AbstractWe present an algorithm for decomposing a symmetric tensor, of dimension n and order d, as a...
Tensor rank and low-rank tensor decompositions have many applications in learning and complexity the...
special session "Tensor Computations in Linear and Multilinear Algebra"Tensor decompositions permit ...
Low rank decomposition of tensors is a powerful tool for learning generative models. The uniqueness ...
Multidimensional data, or tensors, arise natura lly in data analysis applications. Hitchcock&##39;s ...
The Waring Problem over polynomial rings asks how to decompose a homogeneous polynomial p of degree ...
International audienceWe use an algebraic approach to construct minimal decompositions of symmetric ...
We study the decomposition of multivariate polynomials as sums of powers of linear forms. We give a ...
We develop the first fast spectral algorithm to decompose a random third-order tensor over $\mathbb{...
We propose a constructive algorithm that decomposes an arbitrary real tensor into a finite sum of or...
International audienceWe consider two models: simultaneous CP decomposition of several symmetric ten...
We consider the NP-hard problem of approximating a tensor with binary entries by a rank-one tensor, ...
Tensors are higher order generalization of matrices. They appear in a myriad of applications. The te...