一种用于数值优化的改进估计分布算法

Yuquan Li, Gexiang Zhang, Xiangxiang Zeng, Jixiang Cheng, M. Gheorghe, Susan Elias
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引用次数: 0

摘要

分布估计算法(EDAs)是一类建立概率模型的进化算法,其特点是学习和抽样选择个体的概率分布。提出了一种改进的分布估计算法(mEDA),用于数值优化。mEDA采用了一种新颖的采样方法,称为中心个体采样,并采用模糊c均值聚类技术来提高其性能。在一组基准函数上进行的大量实验表明,mEDA在解的质量方面优于文献报道的HPBILc、CEGDA、CEGNABGe和NichingEDA。
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A Modified Estimation of Distribution Algorithm for Numeric Optimization
Estimation of distribution algorithms (EDAs) is a class of probabilistic model-building evolutionary algorithms, which is characterized by learning and sampling the probability distribution of the selected individuals. This paper proposes a modified estimation of distribution algorithm (mEDA) for numeric optimization. mEDA uses a novel sampling method, called centro-individual sampling, and a fuzzy c-means clustering technique to improve its performance. Extensive experiments conducted on a set of benchmark functions show that mEDA outperforms HPBILc, CEGDA, CEGNABGe and NichingEDA, reported in the literature, in terms of the quality of solutions.
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