Optimal weighted least-squares methods
Abstract
We consider the problem of reconstructing an unknown bounded function u defined on a domain X⊂ Rd from noiseless or noisy samples of u at n points (xi)i=1,…,n. We measure the reconstruction error in a norm L2(X,dρ) for some given probability measure dρ. Given a linear space Vm with dim(Vm)=m≤ n, we study in general terms the weighted least-squares approximations from the spaces Vm based on independent random samples. The contribution of the present paper is twofold. From the theoretical perspective, we establish results in expectation and in probability for weighted least squares in general approximation spaces Vm. These results show that for an optimal choice of sampling measure dμ and weight w, which depends on the space Vm and on the measure dρ, stability and optimal accuracy are achieved under the mild condition that n scales linearly with m up to an additional logarithmic factor. The present analysis covers also cases where the function u and its approximants from Vm are unbounded, which might occur for instance in the relevant case where X=Rd and dρ is the Gaussian measure. From the numerical perspective, we propose a sampling method which allows one to generate independent and identically distributed samples from the optimal measure dμ. This method becomes of interest in the multivariate setting where dμ is generally not of tensor product type. We illustrate this for particular examples of approximation spaces Vm of polynomial type, where the domain X is allowed to be unbounded and high or even infinite dimensional, motivated by certain applications to parametric and stochastic PDEs.