Title
Minimaxity in predictive density estimation with parametric constraints
Abstract
This paper is concerned with estimation of a predictive density with parametric constraints under Kullback-Leibler loss. When an invariance structure is embedded in the problem, general and unified conditions for the minimaxity of the best equivariant predictive density estimator are derived. These conditions are applied to check minimaxity in various restricted parameter spaces in location and/or scale families. Further, it is shown that the generalized Bayes estimator against the uniform prior over the restricted space is minimax and dominates the best equivariant estimator in a location family when the parameter is restricted to an interval of the form [a"0,~). Similar findings are obtained for scale parameter families. Finally, the presentation is accompanied by various observations and illustrations, such as normal, exponential location, and gamma model examples.
Year
DOI
Venue
2013
10.1016/j.jmva.2013.01.001
J. Multivariate Analysis
Keywords
Field
DocType
invariance,decision theory,dominance,location scale family,location family
Location parameter,Density estimation,Applied mathematics,Minimax,Mathematical optimization,Equivariant map,Parametric statistics,Bayes estimator,Mathematics,Scale parameter,Estimator
Journal
Volume
ISSN
Citations 
116,
0047-259X
1
PageRank 
References 
Authors
0.48
1
4
Name
Order
Citations
PageRank
Tatsuya Kubokawa13611.73
E. Marchand21605114.99
William E. Strawderman323.33
Jean-Philippe Turcotte410.48