What is Decidable about Partially Observable Markov Decision Processes with ω-Regular Objectives.

J. Comput. Syst. Sci.(2016)

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摘要
Decidability of qualitative analysis of parity POMDPs under finite-memory strategies.Optimal memory bounds and complexity (EXPTIME-completeness) for the above problem.Implementation of our algorithm with several heuristics and experimental results. We consider partially observable Markov decision processes (POMDPs) with ω-regular conditions specified as parity objectives. The class of ω-regular languages provides a robust specification language to express properties in verification, and parity objectives are canonical forms to express them. The qualitative analysis problem given a POMDP and a parity objective asks whether there is a strategy to ensure that the objective is satisfied with probability 1 (resp. positive probability). While the qualitative analysis problems are undecidable even for special cases of parity objectives, we establish decidability (with optimal complexity) for POMDPs with all parity objectives under finite-memory strategies. We establish optimal (exponential) memory bounds and EXPTIME-completeness of the qualitative analysis problems under finite-memory strategies for POMDPs with parity objectives. We also present a practical approach, where we design heuristics to deal with the exponential complexity, and have applied our implementation on a number of POMDP examples.
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关键词
Markov decision processes,Partially observable Markov decision processes (POMDPs),ω-Regular conditions,Parity objectives,Finite-memory strategies
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