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An Adaptive Three-Way Clustering Algorithm for Mixed-Type Data

机译:混合类型数据的自适应三向聚类算法

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The three-way clustering is different from the traditional two-way clustering. Instead of using two regions to represent a cluster by a single set, a cluster is represented by a pair of sets, and there are three regions such as the core region, fringe region and trivial region. The three-way representation intuitively shows that which objects are fringe to the cluster and it is proposed for dealing with uncertain clustering. However, the three-way clustering algorithm usually needs an appropriate evaluation function and corresponding thresholds. It is not scientific and efficient method for setting the thresholds in advance. Meanwhile, there is a large amount of mixed-type data in real life. Therefore, this paper proposes an adaptive three-way clustering algorithm for mixed-type data, which adjusts the three-way thresholds during the clustering process based on the idea of universal gravitation by excavating more detailed ascription relation between objects and clusters. The experimental results show that the proposed algorithm has good performance in indices such as the accuracy, F-measure, RI and NMI.
机译:三向聚类不同于传统的两向聚类。代替使用两个区域通过单个集合来表示聚类,而是通过一对集合来表示聚类,并且存在三个区域,例如核心区域,边缘区域和琐碎区域。三向表示法直观地显示出哪些对象在聚类的边缘,并提出了用于处理不确定聚类的方法。但是,三向聚类算法通常需要适当的评估函数和相应的阈值。预先设置阈值不是一种科学有效的方法。同时,现实生活中存在大量的混合类型数据。因此,本文提出了一种针对混合类型数据的自适应三向聚类算法,该算法基于万有引力的思想,通过挖掘对象与聚类之间更详细的归属关系,在聚类过程中调整三向阈值。实验结果表明,该算法在准确度,F-度量,RI和NMI等指标上均具有良好的性能。

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