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Efficient dynamic resampling for dominance-based multiobjective evolutionary optimization

机译:基于优势的多目标进化优化的高效动态重采样

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摘要

Multi-objective optimization problems are often subject to the presence of objectives that require expensive resampling for their computation. This is the case for many robustness metrics, which are frequently used as an additional objective that accounts for the reliability of specific sections of the solution space. Typical robustness measurements use resampling, but the number of samples that constitute a precise dispersion measure has a potentially large impact on the computational cost of an algorithm. This article proposes the integration of dominance based statistical testing methods as part of the selection mechanism of evolutionary multi-objective genetic algorithms with the aim of reducing the number of fitness evaluations. The performance of the approach is tested on five classical benchmark functions integrating it into two well-known algorithms, NSGA-II and SPEA2. The experimental results show a significant reduction in the number of fitness evaluations while, at the same time, maintaining the quality of the solutions.
机译:多目标优化问题经常受到目标的影响,这些目标的计算需要昂贵的重采样。许多健壮性指标就是这种情况,它们经常用作解决解决方案空间特定部分可靠性的附加目标。典型的稳健性测量使用重采样,但是构成精确色散测量的样本数量可能会对算法的计算成本产生重大影响。本文提出了基于优势的统计测试方法的集成,作为进化多目标遗传算法选择机制的一部分,目的是减少适应性评估的次数。该方法的性能在五个经典基准功能上进行了测试,将其集成到两个著名算法NSGA-II和SPEA2中。实验结果表明,适应性评估的数量大大减少,同时保持了解决方案的质量。

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