This paper is concerned with the approximation of high-dimensional functions in a statistical learning setting, by empirical risk minimization over model classes of functions in tree-based tensor format. These are particular classes of rank-structured functions that can be seen as deep neural networks with a sparse architecture related to the tree and multilinear activation functions. For learning in a given model class, we exploit the fact that tree-based tensor formats are multilinear models and recast the problem of risk minimization over a nonlinear set into a succession of learning problems with linear models. Suitable changes of representation yield numerically stable learning problems and allow to exploit sparsity. For high-dimension...
An increasing number of emerging applications in data science and engineering are based on multidime...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Learning machines for structured data (e.g., trees) are intrinsically based on their capacity to lea...
29 pagesIn this paper, we propose new learning algorithms for approximating high-dimensional functio...
29 pagesIn this paper, we propose new learning algorithms for approximating high-dimensional functio...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
Many problems require the evaluation of complex parametrized models for many instances of the parame...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
The aim of this thesis is to build a bridge between tensors and adaptive structured data processing,...
An increasing number of emerging applications in data science and engineering are based on multidime...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Learning machines for structured data (e.g., trees) are intrinsically based on their capacity to lea...
29 pagesIn this paper, we propose new learning algorithms for approximating high-dimensional functio...
29 pagesIn this paper, we propose new learning algorithms for approximating high-dimensional functio...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
Many problems require the evaluation of complex parametrized models for many instances of the parame...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
In this thesis, we develop an algebraic and graph theoretical reinterpretation of tensor networks an...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
This thesis concerns the optimization and application of low-rank methods, with a special focus on t...
The aim of this thesis is to build a bridge between tensors and adaptive structured data processing,...
An increasing number of emerging applications in data science and engineering are based on multidime...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Learning machines for structured data (e.g., trees) are intrinsically based on their capacity to lea...