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Analysis of the Univariate Marginal Distribution Algorithm modeled by Markov chains

机译:马尔可夫链建模的单变量边际分布算法分析

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This work presents an analysis of the convergence behaviour of the Univariate Marginal Distribution Algorithm (UMDA) when it is used to maximize a number of pseudo-boolean functions. The analysis is based on modeling the algorithm using a reducible Markov chain, whose absorbing states correspond to the individuals of the search space. The absorption probability to the optimum and the expected time of convergence to the set of absorbing states are calculated for each function. This information is used to provide some insights into how the absorption probability to the optimum and the expected absorption times evolve when the size of population increases. The results show the different behaviours of the algorithm in the analyzed functions.
机译:这项工作介绍了单变量边际分布算法(UMDA)在用于最大化大量伪布尔函数时的收敛性的分析。该分析是基于使用可还原马尔可夫链对算法进行建模的,该马尔可夫链的吸收状态对应于搜索空间的个体。为每个函数计算最佳吸收概率和收敛到一组吸收状态的预期时间。该信息用于提供一些洞察力,以了解随着人口规模的增加,最佳吸收概率和预期吸收时间如何演变。结果表明,在所分析的函数中算法的行为不同。

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