Publication | Open Access
Nonapproximability Results for Partially Observable Markov Decision Processes
93
Citations
31
References
2001
Year
Mathematical ProgrammingMarkov Decision ProcessEngineeringControl PoliciesPerformance GuaranteeProbabilistic VerificationMarkov KernelObservable Markov DecisionComplexity Classes CollapseComputational ComplexityProbabilistic ComputationSequential Decision MakingProbability TheoryComputer ScienceCombinatorial OptimizationMechanism DesignNonapproximability ResultsOperations Research
We show that for several variations of partially observable Markov decision processes, polynomial-time algorithms for finding control policies are unlikely to or simply don't have guarantees of finding policies within a constant factor or a constant summand of optimal. Here ``unlikely'' means ``unless some complexity classes collapse,'' where the collapses considered are P=NP, P=PSPACE, or P=EXP. Until or unless these collapses are shown to hold, any control-policy designer must choose between such performance guarantees and efficient computation.
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