Multi-objective Gene-pool optimal mixing evolutionary algorithms

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Abstract

The recently introduced Gene-pool Optimal Mixing Evolutionary Algorithm (GOMEA), with a lean, but sufficient, linkage model and an efficient variation operator, has been shown to be a robust and efficient methodology for solving single objective (SO) optimization problems with superior performance compared to classic genetic algorithms (GAs) and estimation-of-distribution algorithms (EDAs). In this paper, we bring the strengths of GOMEAs to the multi- objective (MO) optimization realm. To this end, we modify the linkage learning procedure and the variation operator of GOMEAs to better suit the need of finding the whole Pareto- optimal front rather than a single best solution. Based on state-of-the-art studies on MOEAs, we further pinpoint and incorporate two other essential components for a scalable MO optimizer. First, the use of an elitist archive is beneficial for keeping track of non-dominated solutions when the main population size is limited. Second, clustering can be cru-cial if different parts of the Pareto-optimal front need to be handled differently. By combining these elements, we construct a multi-objective GOMEA (MO-GOMEA). Experimental results on various MO optimization problems confirm the capability and scalability of our MO-GOMEA that compare favorably with those of the well-known GA NSGA-II and the more recently introduced EDA mohBOA. © 2014 ACM.

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APA

Luong, N. H., La Poutré, H., & Bosman, P. A. N. (2014). Multi-objective Gene-pool optimal mixing evolutionary algorithms. In GECCO 2014 - Proceedings of the 2014 Genetic and Evolutionary Computation Conference (pp. 357–364). Association for Computing Machinery. https://doi.org/10.1145/2576768.2598261

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