On optimality of Bayesian testimation in the normal means problem

成果类型:
Article
署名作者:
Abramovich, Felix; Grinshtein, Vadim; Pensky, Marianna
署名单位:
Tel Aviv University; Open University Israel; State University System of Florida; University of Central Florida
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/009053607000000226
发表日期:
2007
页码:
2261-2286
关键词:
false discovery rate INFLATION CRITERION variable selection regression shrinkage MODEL RISK
摘要:
We consider a problem of recovering a high-dimensional vector mu observed in white noise, where the unknown vector g is assumed to be sparse. The objective of the paper is to develop a Bayesian formalism which gives rise to a family of l(0)-type penalties. The penalties are associated with various choices of the prior distributions pi(n)(center dot) on the number of nonzero entries of mu and, hence, are easy to interpret. The resulting Bayesian estimators lead to a general thresholding rule which accommodates many of the known thresholding and model selection procedures as particular cases corresponding to specific choices of pi(n)(center dot). Furthermore, they achieve optimality in a rather general setting under very mild conditions on the prior. We also specify the class of priors pi(n)(center dot) for which the resulting estimator is adaptively optimal (in the minimax sense) for a wide range of sparse sequences and consider several examples of such priors.
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