Optimal sequential procedures with Bayes decision rules
Statistics Theory
2010-10-18 v2 Probability
Methodology
Statistics Theory
Abstract
In this article, a general problem of sequential statistical inference for general discrete-time stochastic processes is considered. The problem is to minimize an average sample number given that Bayesian risk due to incorrect decision does not exceed some given bound. We characterize the form of optimal sequential stopping rules in this problem. In particular, we have a characterization of the form of optimal sequential decision procedures when the Bayesian risk includes both the loss due to incorrect decision and the cost of observations.
Cite
@article{arxiv.0812.0159,
title = {Optimal sequential procedures with Bayes decision rules},
author = {Andrey Novikov},
journal= {arXiv preprint arXiv:0812.0159},
year = {2010}
}
Comments
Shortened version for print publication, 17 pages