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Two Views on Multiple Mean-Payoff Objectives in Markov Decision Processes
41
Citations
11
References
2011
Year
Unknown Venue
Mathematical ProgrammingEngineeringGame TheoryMarkov Decision ProcessesOperations ResearchStochastic GameCombinatorial OptimizationDecision TheoryMechanism DesignQuantitative ManagementSatisfaction ObjectiveSequential Decision MakingComputer ScienceProbability TheoryMarkov Decision ProcessStochastic OptimizationBusinessDecision ScienceSatisfaction Objectives
We study Markov decision processes (MDPs) with multiple limit-average (or mean-payoff) functions. We consider two different objectives, namely, expectation and satisfaction objectives. Given an MDP with k reward functions, in the expectation objective the goal is to maximize the expected limit-average value, and in the satisfaction objective the goal is to maximize the probability of runs such that the limit-average value stays above a given vector. We show that under the expectation objective, in contrast to the single-objective case, both randomization and memory are necessary for strategies, and that finite-memory randomized strategies are sufficient. Under the satisfaction objective, in contrast to the single-objective case, infinite memory is necessary for strategies, and that randomized memoryless strategies are sufficient for epsilon-approximation, for all epsilon>0. We further prove that the decision problems for both expectation and satisfaction objectives can be solved in polynomial time and the trade-off curve (Pareto curve) can be epsilon-approximated in time polynomial in the size of the MDP and 1/epsilon, and exponential in the number of reward functions, for all epsilon>0. Our results also reveal flaws in previous work for MDPs with multiple mean-payoff functions under the expectation objective, correct the flaws and obtain improved results.
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