Optimal Monte Carlo Methods for L2-Approximation
Abstract
We construct Monte Carlo methods for the L2-approximation in Hilbert spaces of multivariate functions sampling no more than n function values of the target function. Their errors catch up with the rate of convergence and the preasymptotic behavior of the error of any algorithm sampling n pieces of arbitrary linear information, including function values.
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