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Estimating the Ratios of the Stationary Distribution Values for Markov Chains Modeling Evolutionary Algorithms

机译:估计马尔可夫链建模演化算法的平稳分布值之比

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The evolutionary algorithm stochastic process is well-known to be Markovian. These have been under investigation in much of the theoretical evolutionary computing research. When the mutation rate is positive, the Markov chain modeling of an evolutionary algorithm is irreducible and, therefore, has a unique stationary distribution. Rather little is known about the stationary distribution. In fact, the only quantitative facts established so far tell us that the stationary distributions of Markov chains modeling evolutionary algorithms concentrate on uniform populations (i.e., those populations consisting of a repeated copy of the same individual). At the same time, knowing the stationary distribution may provide some information about the expected time it takes for the algorithm to reach a certain solution, assessment of the biases due to recombination and selection, and is of importance in population genetics to assess what is called a "genetic load" (see the introduction for more details). In the recent joint works of the first author, some bounds have been established on the rates at which the stationary distribution concentrates on the uniform populations. The primary tool used in these papers is the "quotient construction" method. It turns out that the quotient construction method can be exploited to derive much more informative bounds on ratios of the stationary distribution values of various subsets of the state space. In fact, some of the bounds obtained in the current work are expressed in terms of the parameters involved in all the three main stages of an evolutionary algorithm: namely, selection, recombination, and mutation.
机译:进化算法的随机过程是众所周知的马尔可夫模型。这些已在许多理论进化计算研究中进行了研究。当突变率为正时,进化算法的马尔可夫链模型是不可约的,因此具有唯一的平稳分布。关于平稳分布知之甚少。实际上,迄今为止建立的唯一定量事实告诉我们,建模进化算法的马尔可夫链的平稳分布集中于统一的种群(即那些由同一个体的重复副本组成的种群)。同时,知道平稳分布可能会提供一些有关该算法达到特定解决方案所需的预期时间的信息,评估由于重组和选择而引起的偏倚,这对于群体遗传学评估所谓的“遗传负载”(有关更多详细信息,请参见简介)。在第一作者的近期合著中,固定分布集中在统一人口上的比率已经确定了一些界限。这些论文中使用的主要工具是“商构造”方法。事实证明,可以利用商构造方法来得出状态空间各个子集的静态分布值之比的更多信息边界。实际上,当前工作中获得的某些界限是根据进化算法的所有三个主要阶段(即选择,重组和突变)所涉及的参数表示的。

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