Abstract
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called Probabilistic-FF, extends the heuristic forward-search machinery of Conformant-FF to problems with probabilistic uncertainty about both the initial state and action effects. Specifically, Probabilistic-FF combines Conformant-FF's techniques with a powerful machinery for weighted model counting in (weighted) CNFs, serving to elegantly define both the search space and the heuristic function. Our evaluation of Probabilistic-FF shows its fine scalability in a range of probabilistic domains, constituting a several orders of magnitude improvement over previous results in this area. We use a problematic case to point out the main open issue to be addressed by further research. © 2007 AI Access Foundation. All rights reserved.
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CITATION STYLE
Domshlak, C., & Hoffmann, J. (2007). Probabilistic planning via heuristic forward search and weighted model counting. Journal of Artificial Intelligence Research, 30, 565–620. https://doi.org/10.1613/jair.2289
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