Near-Optimality of Linear Recovery in Gaussian Observation Scheme under
-Loss
We consider the problem of recovering linear image of a signal known to belong to a given convex compact set from indirect observation of corrupted by Gaussian noise . It is shown that under some assumptions on (satisfied, e.g., when is the intersection of concentric ellipsoids/elliptic cylinders), an easy-to-compute linear estimate is near-optimal, in certain precise sense, in terms of its worst-case, over , expected -error. The main novelty here is that our results impose no restrictions on and , to the best of our knowledge, preceding results on optimality of linear estimates dealt either with the case of direct observations and , or with the "diagonal case" where , are diagonal and is given by a "separable" constraint like or , or with estimating a linear form (i.e., the case one-dimensional ).
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