We derive and analyse a scheme for the approximation of order d tensors A ∈ R n×···×n in the hierarchical (H-) Tucker format, a dimension-multilevel variant of the Tucker format and strongly related to the TT format. For a fixed rank parameter k, the storage complexity of a tensor in H-Tucker format is O(dk 3 + dnk) and we present a (heuristic) algorithm that finds an approximation to a tensor in the H-Tucker format in O(dk 4 + d log(d)nk 2) by inspection of only dk 3 + d log(d)nk 2 entries. Under mild assumptions, tensors in the H-Tucker format are reconstructed. For general tensors we derive error bounds that are based on the approximability of matrices (matricizations of the tensor) by few outer products of its rows and columns. The cons...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
Abstract. We consider Tucker-like approximations with an r × r × r core tensor for three-dimensional...
International audienceWe propose an algorithm for preconditioning and solving high dimensional linea...
Abstract. We define the hierarchical singular value decomposition (SVD) for tensors of order d ≥ 2. ...
The hierarchical Tucker format is a storage-efficient scheme to approximate and represent tensors of...
International audienceMany real-life signal-based applications use the Tucker decomposition of a hig...
We extend results on the dynamical low-rank approximation for the treatment of time-dependent matric...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
Abstract. In this work, we develop an optimization framework for problems whose solutions are well-a...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
Abstract. We consider Tucker-like approximations with an r × r × r core tensor for three-dimensional...
International audienceWe propose an algorithm for preconditioning and solving high dimensional linea...
Abstract. We define the hierarchical singular value decomposition (SVD) for tensors of order d ≥ 2. ...
The hierarchical Tucker format is a storage-efficient scheme to approximate and represent tensors of...
International audienceMany real-life signal-based applications use the Tucker decomposition of a hig...
We extend results on the dynamical low-rank approximation for the treatment of time-dependent matric...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
International audienceIn the context of big data, high-order tensor decompositions have to face a ne...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
Abstract. In this work, we develop an optimization framework for problems whose solutions are well-a...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
The aim of this thesis is the development of parallel algorithms for tensor arithmetic (as, e.g., do...
Abstract. We consider Tucker-like approximations with an r × r × r core tensor for three-dimensional...
International audienceWe propose an algorithm for preconditioning and solving high dimensional linea...