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Learning dominance relations in combined search problems

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2 Author(s)
Yu, C.-F. ; Intel Corp., Santa Clara, CA, USA ; Wah, B.

Dominance relations are used to prune unnecessary nodes in search graphs, but they are problem-dependent and cannot be derived by a general procedure. The authors identify machine learning of dominance relations and the applicable learning mechanisms. A study of learning dominance relations using learning by experimentation is described. This system has been able to learn dominance relations for the 0/1-knapsack problem, an inventory problem the reliability-by-replication problem, the two-machine flow shop problem, a number of single-machine scheduling problems, and a two-machine scheduling problem. It is considered that the same methodology can be extended to learn dominance relations in general

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Software Engineering, IEEE Transactions on  (Volume:14 ,  Issue: 8 )