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Near-Optimality of Linear Recovery in Gaussian Observation Scheme under 22\|\cdot\|_2^2-Loss

Abstract

We consider the problem of recovering linear image BxBx of a signal xx known to belong to a given convex compact set XX from indirect observation ω=Ax+σξ\omega=Ax+\sigma\xi of xx corrupted by Gaussian noise ξ\xi. It is shown that under some assumptions on XX (satisfied, e.g., when XX is the intersection of KK concentric ellipsoids/elliptic cylinders), an easy-to-compute linear estimate is near-optimal, in certain precise sense, in terms of its worst-case, over xXx\in X, expected 22\|\cdot\|_2^2-error. The main novelty here is that our results impose no restrictions on AA and BB, to the best of our knowledge, preceding results on optimality of linear estimates dealt either with the case of direct observations A=IA=I and B=IB=I, or with the "diagonal case" where AA, BB are diagonal and XX is given by a "separable" constraint like X={x:iai2xi21}X=\{x:\sum_ia_i^2x_i^2\leq 1\} or X={x:maxiaixi1}X=\{x:\max_i|a_ix_i|\leq1\}, or with estimating a linear form (i.e., the case one-dimensional BxBx).

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