PLA University of Science and Technology, Nanjing, PR China.
PLoS One. 2017 Dec 5;12(12):e0188815. doi: 10.1371/journal.pone.0188815. eCollection 2017.
Multi-objective clustering has received widespread attention recently, as it can obtain more accurate and reasonable solution. In this paper, an improved multi-objective clustering framework using particle swarm optimization (IMCPSO) is proposed. Firstly, a novel particle representation for clustering problem is designed to help PSO search clustering solutions in continuous space. Secondly, the distribution of Pareto set is analyzed. The analysis results are applied to the leader selection strategy, and make algorithm avoid trapping in local optimum. Moreover, a clustering solution-improved method is proposed, which can increase the efficiency in searching clustering solution greatly. In the experiments, 28 datasets are used and nine state-of-the-art clustering algorithms are compared, the proposed method is superior to other approaches in the evaluation index ARI.
多目标聚类最近受到广泛关注,因为它可以获得更准确和合理的解决方案。本文提出了一种基于粒子群优化的改进多目标聚类框架(IMCPSO)。首先,设计了一种新的聚类问题粒子表示方法,帮助 PSO 在连续空间中搜索聚类解决方案。其次,分析了 Pareto 集的分布。分析结果应用于领导者选择策略,使算法避免陷入局部最优。此外,提出了一种聚类解决方案改进方法,可大大提高聚类解决方案的搜索效率。在实验中,使用了 28 个数据集,并将 9 种最先进的聚类算法进行了比较,所提出的方法在评价指标 ARI 上优于其他方法。