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Markov chain analysis of genetic algorithms applied to fitness functions perturbed concurrently by additive and multiplicative noise

机译:遗传算法的马尔可夫链分析应用于适应性函数的加和乘噪声同时扰动

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We analyze the transition and convergence properties of genetic algorithms (GAs) applied to fitness functions perturbed concurrently by additive and multiplicative noise. Both additive noise and multiplicative noise are assumed to take on finitely many values. We explicitly construct a Markov chain that models the evolution of GAs in this noisy environment and analyze it to investigate the algorithms. Our analysis shows that this Markov chain is indecomposable; it has only one positive recurrent communication class. Using this property, we establish a condition that is both necessary and sufficient for GAs to eventually (i.e., as the number of iterations goes to infinity) find a globally optimal solution with probability 1. Similarly, we identify a condition that is both necessary and sufficient for the algorithms to eventually with probability 1 fail to find any globally optimal solution. Our analysis also shows that the chain has a stationary distribution that is also its steady-state distribution. Based on this property and the transition probabilities of the chain, we compute the exact probability that a GA is guaranteed to select a globally optimal solution upon completion of each iteration.
机译:我们分析了遗传算法(GAs)的过渡和收敛性质,将其应用于适应性函数,并同时受到加性和乘性噪声的干扰。假定加性噪声和乘性噪声都具有有限的多个值。我们明确构建了一个马尔可夫链,该链可在这种嘈杂的环境中对GA的演化进行建模,并对其进行分析以研究算法。我们的分析表明,这个马尔可夫链是不可分解的。它只有一个积极的定期交流班。使用此属性,我们建立了一个条件,该条件对于GA最终(即,迭代次数达到无穷大)找到概率为1的全局最优解是同样必要的。足以使算法最终以1的概率无法找到任何全局最优解。我们的分析还表明,链具有固定分布,也就是其稳态分布。根据此属性和链的转移概率,我们计算出在每次迭代完成后,保证有遗传算法保证选择全局最优解的确切概率。

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