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MOPED: A Multi-objective Parzen-Based Estimation of Distribution Algorithm for Continuous Problems

机译:嘲笑:一种持续问题分布算法的多目标泊位估计

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An evolutionary multi-objective optimization tool based on an estimation of distribution algorithm is proposed. The algorithm uses the ranking method of non-dominated sorting genetic algorithm-II and the Parzen estimator to approximate the probability density of solutions lying on the Pareto front. The proposed algorithm has been applied to different types of test case problems and results show good performance of the overall optimization procedure in terms of the number of function evaluations. An alternative spreading technique that uses the Parzen estimator in the objective function space is proposed as well. When this technique is used, achieved results appear to be qualitatively equivalent to those previously obtained by adopting the crowding distance described in non-dominated sorting genetic algorithm-II.
机译:提出了一种基于分布算法估计的进化多目标优化工具。该算法使用非主导的分类遗传算法-II和偏移估计的排名方法,以近似位于帕累托前面的溶液的概率密度。所提出的算法已应用于不同类型的测试用例问题,结果表现出在功能评估的数量方面的整体优化过程的良好性能。还提出了一种在客观函数空间中使用Parzen估计器的替代扩展技术。当使用该技术时,实现的结果似乎通过采用非主导分类遗传算法-II中描述的拥挤距离而定性等同于先前获得的那些。

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