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Benchmarking a (μ + λ) Genetic Algorithm with Configurable Crossover Probability

机译:使用可配置的交叉概率对(μ+λ)遗传算法进行基准测试

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We investigate a family of (μ+λ) Genetic Algorithms (Gas) which creates offspring either from mutation or by recombining two randomly chosen parents. By scaling the crossover probability, we can thus interpolate from a fully mutation-only algorithm towards a fully crossover-based GA. We analyze, by empirical means, how the performance depends on the interplay of population size and the crossover probability. Our comparison on 25 pseudo-Boolean optimization problems reveals an advantage of crossover-based configurations on several easy optimization tasks, whereas the picture for more complex optimization problems is rather mixed. Moreover, we observe that the "fast" mutation scheme with its are power-law distributed mutation strengths outperforms standard bit mutation on complex optimization tasks when it is combined with crossover, but performs worse in the absence of crossover. We then take a closer look at the surprisingly good performance of the crossover-based (μ+λ) Gas on the well-known LeadingOnes benchmark problem. We observe that the optimal crossover probability increases with increasing population size μ. At the same time, it decreases with increasing problem dimension, indicating that the advantages of the crossover are not visible in the asymptotic view classically applied in runtime analysis. We therefore argue that a mathematical investigation for fixed dimensions might help us observe effects which are not visible when focusing exclusively on asymptotic performance bounds.
机译:我们研究了(μ+λ)遗传算法(Gas)家族,该家族通过突变或通过重组两个随机选择的亲本来创建后代。通过缩放交叉概率,我们可以从完全仅变异的算法向完全基于交叉的GA进行插值。我们通过经验方法分析绩效如何取决于人口规模和交叉概率的相互作用。我们对25个伪布尔优化问题的比较显示了在一些简单的优化任务上基于交叉的配置的优势,而更复杂的优化问题的情况则好坏参半。此外,我们观察到“快速”突变方案具有幂律分布突变强度,当与交叉结合使用时,在复杂的优化任务上其性能优于标准位突变,但在没有交叉的情况下表现较差。然后,我们仔细研究基于交叉的(μ+λ)气体在著名的LeadingOnes基准问题上的惊人性能。我们观察到,最佳的交叉概率随着群体大小μ的增加而增加。同时,它随着问题维数的增加而减小,这表明分频器的优点在运行时分析中经典应用的渐近视图中是不可见的。因此,我们认为对固定尺寸的数学研究可能会帮助我们观察仅集中于渐近性能界限时不可见的效果。

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