Randomized Projection Operators onto Piecewise Polynomial Spaces
Abstract
We introduce computable projection operators onto piecewise polynomial spaces, defined via sampling and discrete least-squares polynomial approximations. The resulting mappings exhibit (almost) optimal approximation properties in L2 and H-1. As smoothers for incomplete or rough data, they yield computable finite element discretizations with optimal convergence rates.
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