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Using Machine Learning to Improve Evolutionary Multi-Objective Optimization

  • Alotaibi, Rakan (Computer and Information Systems college, Umm Alqura university)
  • Received : 2022.06.05
  • Published : 2022.06.30

Abstract

Multi-objective optimization problems (MOPs) arise in many real-world applications. MOPs involve two or more objectives with the aim to be optimized. With these problems improvement of one objective may led to deterioration of another. The primary goal of most multi-objective evolutionary algorithms (MOEA) is to generate a set of solutions for approximating the whole or part of the Pareto optimal front, which could provide decision makers a good insight to the problem. Over the last decades or so, several different and remarkable multi-objective evolutionary algorithms, have been developed with successful applications. However, MOEAs are still in their infancy. The objective of this research is to study how to use and apply machine learning (ML) to improve evolutionary multi-objective optimization (EMO). The EMO method is the multi-objective evolutionary algorithm based on decomposition (MOEA/D). The MOEA/D has become one of the most widely used algorithmic frameworks in the area of multi-objective evolutionary computation and won has won an international algorithm contest.

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References

  1. Q. Zhang and H. Li, -MOEA/D: A Multi-objective Evolutionary Algorithm Based on Decomposition,‖ IEEE Trans. Evol. Comput., vol. 11, no. 6, pp. 712-731, Dec. 2007. https://doi.org/10.1109/TEVC.2007.892759
  2. M. Sierra and C. Coello (2005). -Improving PSO-based Multi-objective Optimization using Crowding, Mutation and Epsilon-Dominance.‖ In Third International Conference on Evolutionary Multi-Criterion Optimization, pp. 505-519
  3. Kassu Jilcha Sileyew (August 7th 2019). Research Design and Methodology [Online First], IntechOpen, DOI: 10.5772/intechopen.85731.