Mean-Variance Optimization in Markov Decision Processes
classification
💻 cs.LG
cs.AI
keywords
decisionmarkovmeannp-hardperformanceprocessesrewardunder
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We consider finite horizon Markov decision processes under performance measures that involve both the mean and the variance of the cumulative reward. We show that either randomized or history-based policies can improve performance. We prove that the complexity of computing a policy that maximizes the mean reward under a variance constraint is NP-hard for some cases, and strongly NP-hard for others. We finally offer pseudopolynomial exact and approximation algorithms.
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