Asymptotically optimal empirical Bayes inference in a piecewise constant sequence model

Abstract
Inference on high-dimensional parameters in structured linear models is an important statistical problem. This paper focuses on the piecewise constant Gaussian sequence model, and we develop a new empirical Bayes solution that enjoys adaptive minimax posterior concentration rates and, thanks to the conjugate form of the empirical prior, relatively simple posterior computations.
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