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Combining Markov-Chain Analysis and Drift Analysis The (1+1) Evolutionary Algorithm on Linear Functions Reloaded

机译:结合马尔可夫链分析和漂移分析重载线性函数的(1 + 1)进化算法

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摘要

In their seminal article Droste, Jansen, and Wegener (Theor. Comput. Sci. 276:51–82, 2002) consider a basic direct-search heuristic with a global search operator, namely the so-called (1+1) Evolutionary Algorithm ((1+1) EA). They present the first theoretical analysis of the (1+1) EA’s expected runtime for the class of linear functions over the search space {0,1} n . In a rather long and involved proof they show that, for any linear function, the expected runtime is O(nlog n), i.e., that there are two constants c and n′ such that, for n≥n′, the expected number of iterations until a global optimum is generated is bounded above by c⋅nlog 2 n. However, neither c nor n′ are specified—they would be pretty large. Here we reconsider this optimization scenario to demonstrate the potential of an analytical method that makes use of the distribution of the evolving candidate solution over the search space {0,1} n . Actually, an invariance property of this distribution is proved, which is then used to obtain a significantly improved bound on the drift, namely the expected change of a potential function, here the number of bits set correctly. Finally, this better estimate of the drift enables an upper bound on the expected number of iterations of 3.8nlog 2 n+7.6log 2 n for n≥2.
机译:在他们的开创性文章Droste,Jansen和Wegener(Theor。Comput。Sci。276:51–82,2002)中,考虑了具有全局搜索算子的基本直接搜索启发式算法,即所谓的(1 + 1)进化算法((1 + 1)EA)。他们对搜索空间{0,1} n 上的线性函数类的(1 + 1)EA预期运行时间进行了首次理论分析。在相当长且涉及广泛的证明中,他们表明,对于任何线性函数,预期运行时间为O(nlog n),即存在两个常数c和n',使得对于n≥n',期望的运行时间为直到生成全局最优值为止的所有迭代都以c⋅nlog 2 n为界。但是,既没有指定c也没有指定n'-它们会很大。在这里,我们重新考虑此优化方案,以证明一种分析方法的潜力,该方法利用了搜索空间{0,1} n 上不断发展的候选解的分布。实际上,证明了该分布的不变性,然后将其用于获得漂移的明显改善的边界,即势函数的预期变化,此处正确设置了位数。最终,对漂移的更好估计使得在n≥2的情况下,预期的3.8nlog 2 n + 7.6log 2 n迭代次数具有上限。

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