In this article we introduce new methods for the analysis of high dimensional data in tensor formats, where the underling data come from the stochastic elliptic boundary value problem. After discretisation of the deterministic operator as well as the presented random fields via KLE and PCE, the obtained high dimensional operator can be approximated via sums of elementary tensors. This tensors representation can be effectively used for computing different values of interest, such as maximum norm, level sets and cumulative distribution function. The basic concept of the data analysis in high dimensions is discussed on tensors represented in the canonical format, however the approach can be easily used in other tensor formats. As an intermedia...
In many applications that deal with high dimensional data, it is important to not store the high dim...
Linear algebra is the foundation of machine learning, especially for handling big data. We want to e...
Dimensionality reduction is a fundamental idea in data science and machine learning. Tensor is ubiqu...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
In the present paper, we give a survey of the recent results and outline future prospects of the ten...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
Abstract We apply the Tensor Train (TT) approximation to construct the Poly-nomial Chaos Expansion (...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
In this work a general approach to compute a compressed representation of the exponential exp(h) of ...
International audienceIn this paper, we propose a method for the approximation of the solution of hi...
Gaussian random fields are widely used as building blocks for modeling stochastic processes. This pa...
Special numerical techniques are already needed to deal with n × n matrices for large n. Tensor data...
In many applications that deal with high dimensional data, it is important to not store the high dim...
Linear algebra is the foundation of machine learning, especially for handling big data. We want to e...
Dimensionality reduction is a fundamental idea in data science and machine learning. Tensor is ubiqu...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
In the present paper, we give a survey of the recent results and outline future prospects of the ten...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
Abstract We apply the Tensor Train (TT) approximation to construct the Poly-nomial Chaos Expansion (...
International audienceThis paper is concerned with the approximation of tensors using tree-based ten...
In this paper, we introduce and analyze a new low-rank multilevel strategy for the solution of rando...
We present an algorithm for the approximation of high-dimensional functions using tree-based low-ran...
The solution of PDE with stochastic data commonly leads to very high-dimensional algebraic problems,...
In this work a general approach to compute a compressed representation of the exponential exp(h) of ...
International audienceIn this paper, we propose a method for the approximation of the solution of hi...
Gaussian random fields are widely used as building blocks for modeling stochastic processes. This pa...
Special numerical techniques are already needed to deal with n × n matrices for large n. Tensor data...
In many applications that deal with high dimensional data, it is important to not store the high dim...
Linear algebra is the foundation of machine learning, especially for handling big data. We want to e...
Dimensionality reduction is a fundamental idea in data science and machine learning. Tensor is ubiqu...