Title of article :
Contingent planning under uncertainty via stochastic satisfiability Original Research Article
Author/Authors :
Stephen M. Majercik، نويسنده , , Michael L. Littman، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
We describe a new planning technique that efficiently solves probabilistic propositional contingent planning problems by converting them into instances of stochastic satisfiability (SSat) and solving these problems instead. We make fundamental contributions in two areas: the solution of SSat problems and the solution of stochastic planning problems. This is the first work extending the planning-as-satisfiability paradigm to stochastic domains. Our planner, zander, can solve arbitrary, goal-oriented, finite-horizon partially observable Markov decision processes (pomdps). An empirical study comparing zander to seven other leading planners shows that its performance is competitive on a range of problems.
Keywords :
Probabilistic planning , Partially observable Markov decision processes , Planning-as-satisfiability , Stochastic satisfiability , Contingent planning , Uncertainty , Incomplete knowledge , Probabi , Decision-theoretic planning
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence