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A New Binary Adaptive Elitist Differential Evolution Based Automatic k-Medoids Clustering for Probability Density Functions

机译:基于新的二元自适应精英差分进化基于概率密度函数的自动K-METOIDS聚类

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摘要

This paper proposes an evolutionary computing based automatic partitioned clustering of probability density function, the so-called binary adaptive elitist differential evolution for clustering of probability density functions (baeDE-CDFs). Herein, the k-medoids based representative probability density functions (PDFs) are preferred to the k-means one for their capability of avoiding outlier effectively. Moreover, addressing clustering problem in favor of an evolutionary optimization one permits determining number of clusters “on the run”. Notably, the application of adaptive elitist differential evolution (aeDE) algorithm with binary chromosome representation not only decreases the computational burden remarkably, but also increases the quality of solution significantly. Multiple numerical examples are designed and examined to verify the proposed algorithm’s performance, and the numerical results are evaluated using numerous criteria to give a comprehensive conclusion. After some comparisons with other algorithms in the literature, it is worth noticing that the proposed algorithm reveals an outstanding performance in both quality of solution and computational time in a statistically significant way.
机译:本文提出了一种基于概率密度函数的基于进化的自动分区聚类,即所谓的二元自适应精英差分演进,用于聚类概率密度函数(BAEDE-CDF)。这里,基于K-METOIDS的代表性概率密度函数(PDF)是优选的k-means一个,用于有效地避免异常的能力。此外,解决聚类问题,支持进化优化一个允许确定群集数量“在运行中”。值得注意的是,具有二进制染色体表示的自适应精英差分演化(ADE)算法的应用不仅可以显着降低计算负担,而且显着提高了解决方案的质量。设计并检查多个数值示例以验证所提出的算法的性能,并使用许多标准进行评估数值结果以提供全面的结论。在文献中与其他算法进行了一些比较,值得注意的是,所提出的算法以统计上显着的方式揭示了解决方案质量和计算时间的出色性能。

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