学位论文详细信息
On the relationship between satisfiability and partially observable Markov decision processes
POMDP;Stochastic SAT;Satisfiability;Planning;Probabilistic Inference;SAT;QBF
Salmon, Ricardoadvisor:Poupart, Pascal ; affiliation1:Faculty of Mathematics ; Poupart, Pascal ;
University of Waterloo
关键词: Stochastic SAT;    QBF;    POMDP;    SAT;    Probabilistic Inference;    Planning;    Doctoral Thesis;    Satisfiability;   
Others  :  https://uwspace.uwaterloo.ca/bitstream/10012/13951/1/Salmon_Ricardo.pdf
瑞士|英语
来源: UWSPACE Waterloo Institutional Repository
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【 摘 要 】

Stochastic satisfiability (SSAT), Quantified Boolean Satisfiability (QBF) and decision-theoretic planning in finite horizon partially observable Markov decision processes (POMDPs) are all PSPACE-Complete problems. Since they are all complete for the same complexity class, I show how to convert them into one another in polynomial time and space. I discuss various properties of each encoding and how they get translated into equivalent constructs in the other encodings. An important lesson of these reductions is that the states in SSAT and flat POMDPs do not match. Therefore, comparing the scalability of satisfiability and flat POMDP solvers based on the size of the state spaces they can tackle is misleading.A new SSAT solver called SSAT-Prime is proposed and implemented. It includes improvements to watch literals, component caching and detecting symmetries with upper and lower bounds under certain conditions. SSAT-Prime is compared against a state of the art solver for probabilistic inference and a native POMDP solver on challenging benchmarks.

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