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A decomposition-based multi-objective evolutionary algorithm with quality indicator

机译:基于分解的多目标进化算法,质量指示

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摘要

The issue of integrating preference information into multi-objective optimization is considered, and a multi objective framework based on decomposition and preference information, called indicator-based MOEA/D (IBMOEA/D), is presented in this study to handle the multi-objective optimization problems more effectively. The proposed algorithm uses a decomposition-based strategy for evolving its working population, where each individual represents a subproblem, and utilizes a binary quality indicator-based selection for maintaining the external population. Information obtained from the quality improvement of individuals is used to determine which subproblem should be invested at each generation by a power law distribution probability. Thus, the indicator-based selection and the decomposition strategy can complement each other. Through the experimental tests on seven many-objective optimization problems and one discrete combinatorial optimization problem, the proposed algorithm is revealed to perform better than several state-of-the-art multi-objective evolutionary algorithms. The effectiveness of the proposed algorithm is also analyzed in detail.
机译:考虑将偏好信息集成到多目标优化中的问题,并且在本研究中介绍了基于分解和偏好信息的多目标框架,称为指示器的MOEA / D(ibmoea / d),以处理多目标优化问题更有效。该算法使用基于分解的策略来发展其工作人群,其中每个单独代表子问题,并利用基于二进制质量指示符的选择来维护外部群体。从个人的质量改进获得的信息用于确定应通过权力分配概率在每一代投资哪些子问题。因此,基于指示符的选择和分解策略可以相互补充。通过对七种多目标优化问题的实验测试和一个离散的组合优化问题,揭示了所提出的算法以优于几种最先进的多目标进化算法。还详细分析了所提出的算法的有效性。

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