We propose a novel combination of the reduced basis method with low-rank tensor techniques for the efficient solution of parameter-dependent linear systems in the case of several parameters. This combination, called rb Tensor, consists of three ingredients. First, the underlying parameter-dependent operator is approximated by an explicit affine representation in a low-rank tensor format. Second, a standard greedy strategy is used to construct a problem-dependent reduced basis. Third, the associated reduced parametric system is solved fo all parameter values on a tensor grid simultaneously via a low-rank approach. This allows us to explicitly represent and store an approximate solution for all parameter values at a time. Once this approximat...
Abstract. By a tensor problem in general, we mean one where all the data on input and output are giv...
AbstractThe tensor completion problem is to recover a low-n-rank tensor from a subset of its entries...
Abstract — We present a new connection between higher-order tensors and affinely structured matrices...
Low-rank approximations play an important role in systems theory and signal processing. The prob-lem...
The paper introduces a reduced order model (ROM) for numerical integration of a dynamical system whi...
Abstract. Higher-order low-rank tensors naturally arise in many applications including hyperspectral...
Tensor-based estimation has been of particular interest of the scientific community for several year...
We present a new mixed precision algorithm to compute low-rank matrix and tensor approximations, a f...
International audienceParameter-dependent models arise in many contexts such as uncertainty quantifi...
The canonical polyadic and rank-(Lt,Lt,1) block term decomposition (CPD and BTD, respectively) are t...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
We consider linear systems A(alpha)x(alpha) - b(alpha) depending on possibly many parameters alpha =...
The reduced basis (RB) methods are proposed here for the solution of parametrized equations in linea...
International audienceTensor methods are among the most prominent tools for the numerical solution o...
The canonical polyadic and rank-(Lr,Lr,1) block term decomposition (CPD and BTD, respectively) are t...
Abstract. By a tensor problem in general, we mean one where all the data on input and output are giv...
AbstractThe tensor completion problem is to recover a low-n-rank tensor from a subset of its entries...
Abstract — We present a new connection between higher-order tensors and affinely structured matrices...
Low-rank approximations play an important role in systems theory and signal processing. The prob-lem...
The paper introduces a reduced order model (ROM) for numerical integration of a dynamical system whi...
Abstract. Higher-order low-rank tensors naturally arise in many applications including hyperspectral...
Tensor-based estimation has been of particular interest of the scientific community for several year...
We present a new mixed precision algorithm to compute low-rank matrix and tensor approximations, a f...
International audienceParameter-dependent models arise in many contexts such as uncertainty quantifi...
The canonical polyadic and rank-(Lt,Lt,1) block term decomposition (CPD and BTD, respectively) are t...
The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) a...
We consider linear systems A(alpha)x(alpha) - b(alpha) depending on possibly many parameters alpha =...
The reduced basis (RB) methods are proposed here for the solution of parametrized equations in linea...
International audienceTensor methods are among the most prominent tools for the numerical solution o...
The canonical polyadic and rank-(Lr,Lr,1) block term decomposition (CPD and BTD, respectively) are t...
Abstract. By a tensor problem in general, we mean one where all the data on input and output are giv...
AbstractThe tensor completion problem is to recover a low-n-rank tensor from a subset of its entries...
Abstract — We present a new connection between higher-order tensors and affinely structured matrices...