v1v2 (latest)
On Optimal Solutions to Compound Statistical Decision Problems
Abstract
In a compound decision problem, consisting of statistically independent copies of the same problem to be solved under the sum of the individual losses, any reasonable compound decision rule satisfies a natural symmetry property, entailing that for any permutation . We derive the greatest lower bound on the risk of any such decision rule. The classical problem of estimating the mean of a homoscedastic normal vector is used to demonstrate the theory, but important extensions are presented as well in the context of Robbins's original ideas.
View on arXivComments on this paper
