Models for Using Stochastic Constraint Solvers in Constraint Logic Programming
نویسندگان
چکیده
This paper proposes a number of models for integrating stochastic constraint solvers into constraint logic programming systems in order to solve constraint satisfaction problems eeciently. Stochastic solvers can solve hard constraint satisfaction problems very eeciently, and constraint logic programming allows heuristics and problem breakdown to be encoded in the same language as the constraints. Hence their combination is attractive. Unfortunately there is a mismatch in the kind of information a stochastic solver provides, and that which a constraint logic programming system requires. We study the semantic properties of the various models of constraint logic programming systems that make use of stochastic solvers, and give soundness and completeness results for their use. We describe an example system we have implemented using a modiied neural network simulator, GENET, as a constraint solver. We brieey compare the eeciency of these models against the propagation based solver approaches typically used in constraint logic programming.
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تاریخ انتشار 1996