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Nonparametric estimation by convex programming

21 August 2009
A. Juditsky
A. Nemirovski
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Abstract

The problem we concentrate on is as follows: given (1) a convex compact set XXX in Rn{\mathbb{R}}^nRn, an affine mapping x↦A(x)x\mapsto A(x)x↦A(x), a parametric family {pμ(⋅)}\{p_{\mu}(\cdot)\}{pμ​(⋅)} of probability densities and (2) NNN i.i.d. observations of the random variable ω\omegaω, distributed with the density pA(x)(⋅)p_{A(x)}(\cdot)pA(x)​(⋅) for some (unknown) x∈Xx\in Xx∈X, estimate the value gTxg^TxgTx of a given linear form at xxx. For several families {pμ(⋅)}\{p_{\mu}(\cdot)\}{pμ​(⋅)} with no additional assumptions on XXX and AAA, we develop computationally efficient estimation routines which are minimax optimal, within an absolute constant factor. We then apply these routines to recovering xxx itself in the Euclidean norm.

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