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JOURNALS // Trudy Matematicheskogo Instituta imeni V.A. Steklova // Archive

Trudy Mat. Inst. Steklova, 2014 Volume 287, Pages 103–124 (Mi tm3583)

This article is cited in 21 papers

Convergence of probability measures and Markov decision models with incomplete information

Eugene A. Feinberga, Pavlo O. Kasyanovb, Michael Z. Zgurovskyb

a Department of Applied Mathematics and Statistics, Stony Brook University, Stony Brook, NY, USA
b Institute for Applied System Analysis, National Technical University of Ukraine "Kyiv Polytechnic Institute", Kyiv, Ukraine

Abstract: This paper deals with three major types of convergence of probability measures on metric spaces: weak convergence, setwise convergence, and convergence in total variation. First, it describes and compares necessary and sufficient conditions for these types of convergence, some of which are well-known, in terms of convergence of probabilities of open and closed sets and, for the probabilities on the real line, in terms of convergence of distribution functions. Second, it provides criteria for weak and setwise convergence of probability measures and continuity of stochastic kernels in terms of convergence of probabilities defined on the base of the topology generated by the metric. Third, it provides applications to control of partially observable Markov decision processes and, in particular, to Markov decision models with incomplete information.

UDC: 519.857.3+519.217

Received in June 2014

Language: English

DOI: 10.1134/S0371968514040062


 English version:
Proceedings of the Steklov Institute of Mathematics, 2014, 287:1, 96–117

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