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arxiv: 1703.00167 · v1 · pith:E7PXTJ3Lnew · submitted 2017-03-01 · 🧮 math.ST · stat.TH

Adaptive estimation of the sparsity in the Gaussian vector model

classification 🧮 math.ST stat.TH
keywords thetamodeltestingadaptiveestimatingestimationgaussianminimax
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Consider the Gaussian vector model with mean value {\theta}. We study the twin problems of estimating the number |{\theta}|_0 of non-zero components of {\theta} and testing whether |{\theta}|_0 is smaller than some value. For testing, we establish the minimax separation distances for this model and introduce a minimax adaptive test. Extensions to the case of unknown variance are also discussed. Rewriting the estimation of |{\theta}|_0 as a multiple testing problem of all hypotheses {|{\theta}|_0 <= q}, we both derive a new way of assessing the optimality of a sparsity estimator and we exhibit such an optimal procedure. This general approach provides a roadmap for estimating the complexity of the signal in various statistical models.

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