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Using learning classifier systems to design selective hyper-heuristics for constraint satisfaction problems
2013
2013 IEEE Congress on Evolutionary Computation
Constraint satisfaction problems (CSP) are defined by a set of variables, where each variable contains a series of values it can be instantiated with. There is a set of constraints among the variables that restrict the different values they can take simultaneously. The task is to find one assignment to all the variables without breaking any constraint. To solve a CSP instance, a search tree is created where each node represents a variable of the instance. The order in which the variables are
doi:10.1109/cec.2013.6557885
dblp:conf/cec/Ortiz-BaylissTC13
fatcat:gms4p3az2nd5hlzozvyjjs4sem