Experiments with classification-based scalarizing functions in interactive multiobjective optimization

Experiments with classification-based scalarizing functions in interactive multiobjective optimization

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Article ID: iaor20084153
Country: Netherlands
Volume: 175
Issue: 2
Start Page Number: 931
End Page Number: 947
Publication Date: Dec 2006
Journal: European Journal of Operational Research
Authors: , ,
Keywords: classification
Abstract:

In multiobjective optimization methods, the multiple conflicting objectives are typically converted into a single objective optimization problem with the help of scalarizing functions and such functions may be constructed in many ways. We compare both theoretically and numerically the performance of three classification-based scalarizing functions and pay attention to how well they obey the classification information. In particular, we devote special interest to the differences the scalarizing functions have in the computational cost of guaranteeing Pareto optimality. It turns out that scalarizing functions with or without so-called augmentation terms have significant differences in this respect. We also collect a set of mostly nonlinear benchmark test problems that we use in the numerical comparisons.

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