We analyse the problem of approximating a multivariate function by dis- crete least-squares projection on a polynomial space starting from random, noise-free observations. An area of possible application of such technique is Uncertainty Quantification (UQ) for computational models. We prove an optimal convergence estimate, up to a logarithmic fac- tor, in the monovariate case, when the observation points are sampled in a bounded domain from a probability density function bounded away from zero, provided the number of samples scales quadratically with the dimen- sion of the polynomial space. Several numerical tests are presented both in the monovariate and mul- tivariate case, confirming our theoretical estimates. The numerical tes...
Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the least-squares...
Weighted least squares polynomial approximation uses random samples to determine projections of func...
Recent advances in genetics, computer vision, and text mining are accompanied by analyzing data comi...
We analyse the problem of approximating a multivariate function by dis- crete least-squares project...
We analyse the problem of approximating a multivariate function by discrete least-squares projection...
We analyze the problem of approximating a multivariate function by dis-crete least-squares projectio...
We analyse the problem of approximating a multivariate function by discrete least-squares projection...
In this work we consider the random discrete $L^2$ projection on polynomial spaces (hereafter RDP) f...
In this work we consider the random discrete $L^2$ projection on polynomial spaces (hereafter RDP) f...
We study the accuracy of the discrete least-squares approximation on a finite-dimensional space of a...
Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the lea...
We analyze the stability and accuracy of discrete least squares on multivariate poly- nomial spaces ...
We study the accuracy of the discrete least-squares approximation on a finite dimensional space of a...
We consider the problem of reconstructing an unknown function f on a domain X from samples of f at n...
We analyze the accuracy of the discrete least-squares approximation of a function u in multivariate ...
Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the least-squares...
Weighted least squares polynomial approximation uses random samples to determine projections of func...
Recent advances in genetics, computer vision, and text mining are accompanied by analyzing data comi...
We analyse the problem of approximating a multivariate function by dis- crete least-squares project...
We analyse the problem of approximating a multivariate function by discrete least-squares projection...
We analyze the problem of approximating a multivariate function by dis-crete least-squares projectio...
We analyse the problem of approximating a multivariate function by discrete least-squares projection...
In this work we consider the random discrete $L^2$ projection on polynomial spaces (hereafter RDP) f...
In this work we consider the random discrete $L^2$ projection on polynomial spaces (hereafter RDP) f...
We study the accuracy of the discrete least-squares approximation on a finite-dimensional space of a...
Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the lea...
We analyze the stability and accuracy of discrete least squares on multivariate poly- nomial spaces ...
We study the accuracy of the discrete least-squares approximation on a finite dimensional space of a...
We consider the problem of reconstructing an unknown function f on a domain X from samples of f at n...
We analyze the accuracy of the discrete least-squares approximation of a function u in multivariate ...
Motivated by the numerical treatment of parametric and stochastic PDEs, we analyze the least-squares...
Weighted least squares polynomial approximation uses random samples to determine projections of func...
Recent advances in genetics, computer vision, and text mining are accompanied by analyzing data comi...