From Constraints to Resolution Rules, Part I: Conceptual Framework

11 Apr 2013Denis Berthier

Many real world problems naturally appear as constraints satisfaction problems (CSP), for which very efficient algorithms are known. Most of these involve the combination of two techniques: some direct propagation of constraints between variables (with the goal of reducing their sets of possible values) and some kind of structured search (depth-first, breadth-first,...)... (read more)

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