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arxiv: 1304.1761 · v3 · pith:YNNCSKAZnew · submitted 2013-04-05 · 🧮 math.ST · stat.TH

On Bayesian supremum norm contraction rates

classification 🧮 math.ST stat.TH
keywords ratessup-normachievebayesianconvergencedensityoptimalused
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Building on ideas from Castillo and Nickl [Ann. Statist. 41 (2013) 1999-2028], a method is provided to study nonparametric Bayesian posterior convergence rates when "strong" measures of distances, such as the sup-norm, are considered. In particular, we show that likelihood methods can achieve optimal minimax sup-norm rates in density estimation on the unit interval. The introduced methodology is used to prove that commonly used families of prior distributions on densities, namely log-density priors and dyadic random density histograms, can indeed achieve optimal sup-norm rates of convergence. New results are also derived in the Gaussian white noise model as a further illustration of the presented techniques.

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