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Optimal solution for undiscounted variance penalized Markov decision chains. Abstract
- 1.0410871 - UTIA-B 20020085 DE eng A - Abstract
Sladký, Karel
Optimal solution for undiscounted variance penalized Markov decision chains. Abstract.
Berlin: HumboldtUniversity Berlin, 2002. Mathematical Methods in Economy and Industry. Abstracts. s. 14
[Joint Czech-German-Slovak Conference /12./. 22.07.2002-26.07.2002, Arnstadt]
R&D Projects: GA ČR GA402/02/1015; GA ČR GA402/02/0539
Institutional research plan: CEZ:AV0Z1075907
Keywords : Markov decision chains * optimal policies * mean-variance penalization
Subject RIV: BB - Applied Statistics, Operational Research
We investigate how the mean variance selection rule can work in Markovian decision models. In contrast to the classical models we assume that instead of maximizing the mean reward per transition we consider more sophisticated criteria taking into account also higher moments and the variance of the cumulative reward. Properties of optimal policies as well as optimization procedures with respect to the above criteria are discussed primarily for undiscounted long run models.
Permanent Link: http://hdl.handle.net/11104/0130958
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