改进基于蚁群的聚类——一种混沌蚁群算法

X. Huang, Yixian Yang, Xinxin Niu
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引用次数: 5

摘要

基于蚁群的聚类作为一种启发自然的启发式算法,已被应用于数据挖掘环境中进行聚类和地形映射。它来源于在真实蚁群中观察到的基本行为模型。早期的工作展示了基于蚁群的聚类的一些有前途的特征,但它们并没有扩展到提高其性能、稳定性、收敛性和其他关键特征。在本文中,我们描述了一种改进版本,称为CACAS,它采用了使用混沌摄动来提高个体质量的重要策略,并利用混沌摄动来避免搜索陷入局部最优。我们将其性能与K-means方法和基于蚁群的聚类方法进行了比较,通过评估函数和使用一组分析数据的地形映射。我们的结果表明,CACAS是一种稳健可行的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Improving Ant-Based Clustering - An Chaotic Ant Clustering Algorithm
Ant-based clustering as a nature-inspired heuristic algorithm has been applied in a data-mining context to perform both clustering and topographic mapping. It is derived from a basic model of behavior observed in real ant colonies. Early works demonstrated some promising characteristics of the ant-based clustering, but they did not extend to improve its performance, stability, convergence, and other key features. In this paper, we describe an improved version, called CACAS, adopting an important strategy of using chaotic perturbation to improve individual quality and utilized chaos perturbation to avoid the search being trapped in local optimum. We compare its performance with the K-means approach and ant-based clustering by evaluation functions and topographic mapping using a set of analytical data. Our results demonstrate CACAS is a robust and viable approach.
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