Markov chain analysis of genetic algorithms in a wide variety of noisy environments

Takéhiko Nakama
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引用次数: 7

Abstract

We examine the convergence properties of genetic algorithms (GAs) in a wide variety of noisy environments where fitness perturbation can occur in any form for example, fitness functions can be concurrently perturbed by additive and multiplicative noise. We reveal the convergence properties of such GAs by constructing and analyzing a Markov chain that explicitly models the evolution of the algorithms. We compute the one-step transition probabilities of the chain and show that the chain has only one positive recurrent communication class. Based on this property, we establish a condition that is necessary and sufficient for GAs to eventually find a globally optimal solution with probability 1. We also identify a condition that is necessary and sufficient for GAs to eventually with probability 1 fail to find any globally optimal solution. Our analysis also shows that in all the noisy environments, the chain converges to stationarity: It has a unique stationary distribution that is also its steady-state distribution. We describe how this property and the one-step transition probabilities of the chain can be used to compute the exact probability that a GA is guaranteed to select a globally optimal solution upon completion of each iteration.
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遗传算法在各种噪声环境下的马尔可夫链分析
我们研究了遗传算法(GAs)在各种噪声环境中的收敛特性,其中适应度扰动可能以任何形式发生,例如,适应度函数可能同时受到加性和乘性噪声的扰动。我们通过构造和分析一个马尔可夫链来揭示这类GAs的收敛性,该马尔可夫链明确地模拟了算法的演化。我们计算了链的一步转移概率,并证明了链只有一个正循环通信类。基于这一性质,我们建立了GAs最终找到概率为1的全局最优解的充分必要条件。我们还确定了一个条件,该条件是GAs最终以概率1无法找到任何全局最优解的必要和充分条件。我们的分析还表明,在所有有噪声的环境中,链收敛于平稳:它有一个唯一的平稳分布,也是它的稳态分布。我们描述了如何利用这一性质和链的一步转移概率来计算保证遗传算法在每次迭代完成时选择全局最优解的精确概率。
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