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Histogram-based Estimation Of Distribution Algorithm: A Competent Method For Continuous Optimization

机译:基于直方图的分布估计算法:一种连续优化的有效方法

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Designing efficient estimation of distribution algorithms for optimizing complex continuous problems is still a challenging task. This paper utilizes histogram probabilistic model to describe the distribution of population and to generate promising solutions. The advantage of histogram model, its intrinsic multimodality, makes it proper to describe the solution distribution of complex and multimodal continuous problems. To make histogram model more efficiently explore and exploit the search space, several strategies are brought into the algorithms: the surrounding effect reduces the population size in estimating the model with a certain number of the bins and the shrinking strategy guarantees the accuracy of optimal solutions. Furthermore, this paper shows that histogram-based EDA (Estimation of distribution algorithm) can give comparable or even much better performance than those predominant EDAs based on Gaussian models.
机译:设计分配算法的有效估计以优化复杂的连续问题仍然是一项艰巨的任务。本文利用直方图概率模型来描述人口分布并产生有希望的解决方案。直方图模型的优点是其固有的多模态性,因此很适合描述复杂和多模态连续问题的解分布。为了使直方图模型更有效地探索和利用搜索空间,算法中引入了几种策略:在具有一定数量的分箱时,周围效应减小了估计模型的总体数量,并且缩小策略保证了最优解的准确性。此外,本文表明,基于直方图的EDA(分布估计算法)与基于高斯模型的主要EDA相比,具有可比甚至更好的性能。

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