Nonparametric estimation by convex programming
Abstract
The problem we concentrate on is as follows: given (1) a convex compact set in , an affine mapping , a parametric family of probability densities and (2) i.i.d. observations of the random variable , distributed with the density for some (unknown) , estimate the value of a given linear form at . For several families with no additional assumptions on and , we develop computationally efficient estimation routines which are minimax optimal, within an absolute constant factor. We then apply these routines to recovering itself in the Euclidean norm.
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