Probabilistic reasoning with answer sets
About
This paper develops a declarative language, P-log, that combines logical and probabilistic arguments in its reasoning. Answer Set Prolog is used as the logical foundation, while causal Bayes nets serve as a probabilistic foundation. We give several non-trivial examples and illustrate the use of P-log for knowledge representation and updating of knowledge. We argue that our approach to updates is more appealing than existing approaches. We give sufficiency conditions for the coherency of P-log programs and show that Bayes nets can be easily mapped to coherent P-log programs.
Chitta Baral, Michael Gelfond, Nelson Rushton• 2008
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Simple P-log Program Computation | dice | Preparation Time (s)0.00e+0 | 19 | |
| Simple P-log Program Computation | Robot | Preparation Time (s)0.00e+0 | 16 |
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