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An aggregated clustering approach using multi-ant colonies algorithms

机译:使用多蚁群算法的聚集聚类方法

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This paper presents a multi-ant colonies approach for clustering data that consists of some parallel and independent ant colonies and a queen ant agent. Each ant colony process takes different types of ants moving speed and different versions of the probability conversion function to generate various clustering results with an ant-based clustering algorithm. These results are sent to the queen ant agent and combined by a hypergraph model to calculate a new similarity matrix. The new similarity matrix is returned back to each ant colony process to re-cluster the data using the new information. Experimental evaluation shows that the average performance of the aggregated multi-ant colonies algorithms outperforms that of the single ant-based clustering algorithm and the popular K-means algorithm. The result also shows that the lowest outliers strategy for selecting the current data set has the best performance quality. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:本文提出了一种用于聚类数据的多蚁群方法,该方法由一些并行且独立的蚁群和蚁后代理组成。每个蚁群过程都采用不同类型的蚂蚁移动速度和不同版本的概率转换函数,以使用基于蚂蚁的聚类算法生成各种聚类结果。这些结果被发送到蚁后代理,并通过超图模型进行组合以计算新的相似度矩阵。新的相似度矩阵返回到每个蚁群过程,以使用新信息重新聚类数据。实验评估表明,聚合的多蚁群算法的平均性能优于基于单蚂蚁的聚类算法和流行的K-means算法。结果还表明,用于选择当前数据集的最低异常值策略具有最佳的性能质量。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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