Clustering analysis on alumni data using abandoned and Reborn Particle Swarm Optimization

P. Mudjihartono, T. Tanprasert, Rachsuda Jiamthapthaksin
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引用次数: 3

Abstract

Alumni data is one of the most important data that university management uses for developing the learning process decisions. This paper applies the idea of Abandoned and Reborn PSO (AR-PSO) to convert a clustering problem into the optimization form with an objective function to minimize the ugliness of the desired clusters. This algorithm of Clustering using AR-PSO (CAR-PSO) is slightly adapted to the cluster problem domain. The generated clusters need to be examined to decide if they are acceptable. There are three evaluations; the closeness, the separation and the purity. Finally, the experiment results show that the CAR-PSO is comparable with &-means in both types of alumni data while leaving the other two clustering algorithms.
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基于废弃粒子群和再生粒子群算法的校友数据聚类分析
校友数据是大学管理层用来制定学习过程决策的最重要的数据之一。本文应用AR-PSO的思想,将聚类问题转化为具有最小化期望聚类丑陋目标函数的优化形式。这种基于AR-PSO (CAR-PSO)的聚类算法稍微适应了聚类问题域。需要检查生成的集群,以确定它们是否可接受。有三种评估;亲密,分离和纯洁。最后,实验结果表明,CAR-PSO在两种类型的校友数据中都与&-means具有可比性,而其他两种聚类算法则不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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