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arxiv: 1606.03894 · v1 · pith:ESDC3UVKnew · submitted 2016-06-13 · 💻 cs.AI · cs.DM· cs.DS

A Probabilistic-Based Model for Binary CSP

classification 💻 cs.AI cs.DMcs.DS
keywords domainexpressarc-inconsistentbinaryconstraintexpectationmodelnetwork
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This work introduces a probabilistic-based model for binary CSP that provides a fine grained analysis of its internal structure. Assuming that a domain modification could occur in the CSP, it shows how to express, in a predictive way, the probability that a domain value becomes inconsistent, then it express the expectation of the number of arc-inconsistent values in each domain of the constraint network. Thus, it express the expectation of the number of arc-inconsistent values for the whole constraint network. Next, it provides bounds for each of these three probabilistic indicators. Finally, a polytime algorithm, which propagates the probabilistic information, is presented.

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