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Lower Bounds on the Runtime of Crossover-Based Algorithms via Decoupling and Family Graphs

机译:通过去耦和家庭图的基于交叉的基于交叉算法的运行时间下限

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The runtime analysis of evolutionary algorithms using crossover as search operator has recently produced remarkable results indicating benefits and drawbacks of crossover and illustrating its working principles. Virtually all these results are restricted to upper bounds on the running time of the crossover-based algorithms. This work addresses this lack of lower bounds and rigorously bounds the optimization time of simple algorithms using uniform crossover on the search space {0,1}(n) from below via two novel techniques called decoupling and family graphs. First, a simple steady-state crossover-based evolutionary algorithm without selection pressure is analyzed and shown that after O(mu log mu) generations, bit positions are sampled almost independently with marginal probabilities corresponding to the fraction of one-bits at the corresponding position in the initial population. In the presence of weak selective pressure induced by the probabilistic application of tournament selection, it is demonstrated that the inheritance probability at an arbitrary locus quickly approaches a uniform distribution over the initial population up to additive factors that depend on the effect of selection. Afterwards, the algorithm is analyzed by a novel generalization of the family tree technique originally introduced for mutation-only EAs. Using these so-called family graphs, almost tight lower bounds on the optimization time on the OneMax benchmark function are shown.
机译:使用交叉作为搜索操作员的进化算法的运行时分析最近产生了显着的结果,表明交叉的益处和缺点并说明其工作原理。实际上,所有这些结果都仅限于基于交叉的算法的运行时间的上限。这项工作解决了这种缺乏下限,并且在下面的来自下面的来自下面的搜索空间{0,1}(n)上的简单算法的优化时间通过两种称为解耦和家庭图的新颖技术。首先,分析了没有选择压力的简单稳态交叉的进化算法,并示出了在O(mu log mu)几代之后,几乎独立地采样比特位置,与相应位置处的一位分数相对应的边缘概率在初始人口中。在通过概率选择竞技选择的概率选择弱的选择性压力存在下,证明任意基因座的遗传概率快速接近初始分布,达到依赖于选择效果的附加因素。之后,通过最初引入突变的突变的家谱技术的新颖概括来分析该算法。使用这些所谓的族图,显示了Onemax基准函数上的优化时间上几乎紧密的下限。

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