A SEQUENTIALLY PLANNED BAYESIAN MULTIPLE DECISION PROBLEM IN CONTINUOUS TIME

In this paper we formulate a finite sequentially planned Bayesian multiple decision problem, thereby introducing a theory of optimal sampling for stochastic processes in continuous time as an alternative observation concept to stopping times, and elaborate the existence and the structure of a Bayes...

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Bibliographic Details
Published inSequential analysis Vol. 21; no. 1-2; pp. 59 - 86
Main Author Roters, Markus
Format Journal Article
LanguageEnglish
Published Taylor & Francis Group 20.05.2002
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ISSN0747-4946
1532-4176
DOI10.1081/SQA-120004173

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Summary:In this paper we formulate a finite sequentially planned Bayesian multiple decision problem, thereby introducing a theory of optimal sampling for stochastic processes in continuous time as an alternative observation concept to stopping times, and elaborate the existence and the structure of a Bayes procedure for the sequentially planned observation of stochastic processes of the exponential class. The optimal procedure consists of a Bayesian terminal decision procedure (non-sequential part) and an optimal control variable (sequential part). Moreover, some properties of the Bayes procedure are considered.
ISSN:0747-4946
1532-4176
DOI:10.1081/SQA-120004173