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Using support vector machines to learn the efficient set in multiple objective discrete optimization
Authors:Haldun Aytuğ  Serpil Sayın
Affiliation:1. University of Florida, Warrington College of Business, Department of Decision and Information Sciences, 343 STZ, P.O. Box 117169, Gainesville, FL 32611-7169, USA;2. Koç University, College of Administrative Sciences and Economics, Sar?yer, ?stanbul 34450, Turkey
Abstract:We propose using support vector machines (SVMs) to learn the efficient set in multiple objective discrete optimization (MODO). We conjecture that a surface generated by SVM could provide a good approximation of the efficient set. As one way of testing this idea, we embed the SVM-approximated efficient set information into a Genetic Algorithm (GA). This is accomplished by using a SVM-based fitness function that guides the GA search. We implement our SVM-guided GA on the multiple objective knapsack and assignment problems. We observe that using SVM improves the performance of the GA compared to a benchmark distance based fitness function and may provide competitive results.
Keywords:Multiple objective optimization   Efficient set   Machine learning   Support vector machines
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