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      Life is Random, Time is Not: Markov Decision Processes with Window Objectives

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          Abstract

          The window mechanism was introduced by Chatterjee et al. [1] to strengthen classical game objectives with time bounds. It permits to synthesize system controllers that exhibit acceptable behaviors within a configurable time frame, all along their infinite execution, in contrast to the traditional objectives that only require correctness of behaviors in the limit. The window concept has proved its interest in a variety of two-player zero-sum games, thanks to the ability to reason about such time bounds in system specifications, but also the increased tractability that it usually yields. In this work, we extend the window framework to stochastic environments by considering the fundamental threshold probability problem in Markov decision processes for window objectives. That is, given such an objective, we want to synthesize strategies that guarantee satisfying runs with a given probability. We solve this problem for the usual variants of window objectives, where either the time frame is set as a parameter, or we ask if such a time frame exists. We develop a generic approach for window-based objectives and instantiate it for the classical mean-payoff and parity objectives, already considered in games. Our work paves the way to a wide use of the window mechanism in stochastic models. [1] Krishnendu Chatterjee, Laurent Doyen, Mickael Randour, and Jean-Fran\c{c}ois Raskin. Looking at mean-payoff and total-payoff through windows. Inf. Comput., 242:25-52, 2015.

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            Number of quantifiers is better than number of tape cells

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              The Odds of Staying on Budget

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                Author and article information

                Journal
                11 January 2019
                Article
                1901.03571
                431ef118-f543-4af9-a248-9f96c42ff31d

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                cs.LO cs.AI cs.FL cs.GT math.PR

                Theoretical computer science,Probability,Artificial intelligence
                Theoretical computer science, Probability, Artificial intelligence

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