School of Mechanical Engineering, Tongji University, Shanghai 200092, China.
Comput Intell Neurosci. 2020 Mar 18;2020:1386839. doi: 10.1155/2020/1386839. eCollection 2020.
Fuzzy c-means (FCM) is one of the best-known clustering methods to organize the wide variety of datasets automatically and acquire accurate classification, but it has a tendency to fall into local minima. For overcoming these weaknesses, some methods that hybridize PSO and FCM for clustering have been proposed in the literature, and it is demonstrated that these hybrid methods have an improved accuracy over traditional partition clustering approaches, whereas PSO-based clustering methods have poor execution time in comparison to partitional clustering techniques, and the current PSO algorithms require tuning a range of parameters before they are able to find good solutions. Therefore, this paper introduces a hybrid method for fuzzy clustering, named FCM-ELPSO, which aim to deal with these shortcomings. It combines FCM with an improved version of PSO, called ELPSO, which adopts a new enhanced logarithmic inertia weight strategy to provide better balance between exploration and exploitation. This new hybrid method uses PBM(F) index and the objective function value as cluster validity indexes to evaluate the clustering effect. To verify the effectiveness of the algorithm, two types of experiments are performed, including PSO clustering and hybrid clustering. Experiments show that the proposed approach significantly improves convergence speed and the clustering effect.
模糊 C 均值(FCM)是最著名的聚类方法之一,可用于自动组织各种数据集并获得准确的分类,但它容易陷入局部最小值。为了克服这些弱点,文献中提出了一些将 PSO 和 FCM 混合用于聚类的方法,这些混合方法在准确性方面优于传统的分区聚类方法,而基于 PSO 的聚类方法在执行时间方面不如分区聚类技术,并且当前的 PSO 算法在能够找到好的解决方案之前需要调整一系列参数。因此,本文提出了一种模糊聚类的混合方法,称为 FCM-ELPSO,旨在解决这些缺点。它将 FCM 与称为 ELPSO 的 PSO 的改进版本结合在一起,ELPSO 采用了新的增强对数惯性权重策略,以在探索和利用之间提供更好的平衡。这种新的混合方法使用 PBM(F)指数和目标函数值作为聚类有效性指标来评估聚类效果。为了验证算法的有效性,进行了两种类型的实验,包括 PSO 聚类和混合聚类。实验表明,所提出的方法显著提高了收敛速度和聚类效果。