资源论文Approximation-Guided Evolutionary Multi-Objective Optimization

Approximation-Guided Evolutionary Multi-Objective Optimization

2019-11-12 | |  56 |   40 |   0
Abstract Multi-objective optimization problems arise frequently in applications but can often only be solved approximately by heuristic approaches. Evolutionary algorithms have been widely used to tackle multi-objective problems. These algorithms use different measures to ensure diversity in the objective space but are not guided by a formal notion of approximation. We present a new framework of an evolutionary algorithm for multi-objective optimization that allows to work with a formal notion of approximation. Our experimental results show that our approach outperforms state-of-theart evolutionary algorithms in terms of the quality of the approximation that is obtained in particular for problems with many objectives.

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