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Local best particle swarm optimization for partitioning data clustering

机译:用于分区数据聚类的局部最佳粒子群优化

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This paper proposes a new method for partitioning data clustering using PSO. The Proposed methods LPSOC designed for hard clusters. LPSOC alleviate some of the drawbacks of traditional algorithms and the state-of-the-art PSO clustering algorithm. Population-based algorithms such as PSO is less sensitive to initial condition than other algorithms such as K-means since search starts from multiple positions. The proposed algorithm LPSOC is less susceptible to local minima than K-means or even gbest version of PSO. In gbest PSO, all centroids are encoded in a single particle. Thus, the global best particle is a complete solution to the problem because its encoding contains the best position found for the centroids of all clusters. We used the local version of PSO in LPOSC. LPSOC uses a neighborhood of particles for optimizing the position of each cluster centroid. The whole swarm represents a solution to the clustering problem. This representation is far less computationally expensive than standard gbest version. The LPSOC is tested using six datasets from different domains to measure its performance fairly. LPOSC is compared with standard PSO for clustering and K-means. The results assure that the proposed method is very promising.
机译:本文提出了一种使用PSO进行数据聚类的新方法。 LPSOC的建议方法是为硬集群设计的。 LPSOC缓解了传统算法和最新的PSO聚类算法的一些缺点。由于搜索是从多个位置开始的,因此基于种群的算法(例如PSO)对初始条件的敏感性低于其他算法(例如K-means)。所提出的算法LPSOC比K均值甚至PSO的最佳版本对局部最小值的敏感度更低。在最好的PSO中,所有质心都编码在一个粒子中。因此,全局最佳粒子是该问题的完整解决方案,因为其编码包含所有聚类质心的最佳位置。我们在LPOSC中使用了PSO的本地版本。 LPSOC使用粒子邻域来优化每个群集质心的位置。整个群体代表了集群问题的一种解决方案。与标准的gbest版本相比,此表示在计算上要便宜得多。使用来自不同领域的六个数据集测试了LPSOC,以公平地衡量其性能。将LPOSC与标准PSO进行聚类和K均值比较。结果确保了所提出的方法是非常有前途的。

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