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      The Horseshoe Estimator: Posterior Concentration around Nearly Black Vectors

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          Abstract

          We consider the horseshoe estimator due to Carvalho, Polson and Scott (2010) for the multivariate normal mean model in the situation that the mean vector is sparse in the nearly black sense. We assume the frequentist framework where the data is generated according to a fixed mean vector. We show that if the number of nonzero parameters of the mean vector is known, the horseshoe estimator attains the minimax \(\ell_2\) risk, possibly up to a multiplicative constant. We provide conditions under which the horseshoe estimator combined with an empirical Bayes estimate of the number of nonzero means still yields the minimax risk. We furthermore prove an upper bound on the rate of contraction of the posterior distribution around the horseshoe estimator, and a lower bound on the posterior variance. These bounds indicate that the posterior distribution of the horseshoe prior may be more informative than that of other one-component priors, including the Lasso.

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          Simultaneous analysis of Lasso and Dantzig selector

          We exhibit an approximate equivalence between the Lasso estimator and Dantzig selector. For both methods we derive parallel oracle inequalities for the prediction risk in the general nonparametric regression model, as well as bounds on the \(\ell_p\) estimation loss for \(1\le p\le 2\) in the linear model when the number of variables can be much larger than the sample size.
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            Convergence rates of posterior distributions

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              Inference with normal-gamma prior distributions in regression problems

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                Author and article information

                Journal
                2014-04-01
                2014-12-15
                Article
                10.1214/14-EJS962
                1404.0202
                e50babf2-1e4f-4700-b89b-b35e10a50c77

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                62F15, 62F10
                Electron. J. Statist. Volume 8, Number 2 (2014), 2585-2618
                This version differs from the final published version in pagination and typographical detail; Available at http://projecteuclid.org/euclid.ejs/1418134265
                math.ST stat.TH

                Statistics theory
                Statistics theory

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