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Minimum Cluster Size Estimation and Cluster Refinement for the Randomized Gravitational Clustering Algorithm

机译:随机引力聚类算法的最小聚类大小估计和聚类细化

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Although clustering is an unsupervised learning approach, most clustering algorithms require setting several parameters (such as the number of clusters, minimum density or distance threshold) in advance to work properly. In this paper, we eliminate the necessity of setting the minimum cluster size parameter of the Randomized Gravitational Clustering algorithm proposed by Gomez et al. Basically, the minimum cluster size is estimated using a heuristic that takes in consideration the functional relation between the number of clusters and the clusters with at least a given number of points. Then a data point's region of action (region of the space assigned to a point) is defined and a cluster refinement process is proposed in order to merge overlapping clusters. Our experimental results show that the proposed algorithm is able to deal with noise, while finding an appropriate number of clusters without requiring a manual setting of the minimum cluster size.
机译:尽管聚类是一种无监督的学习方法,但是大多数聚类算法都需要预先设置几个参数(例如聚类数,最小密度或距离阈值)才能正常工作。在本文中,我们消除了设置由Gomez等人提出的随机引力聚类算法的最小聚类大小参数的必要性。基本上,最小簇大小是使用启发式算法估算的,该启发式算法考虑了簇数与至少具有给定点数的簇之间的函数关系。然后定义数据点的作用区域(分配给点的空间区域),并提出聚类优化过程,以合并重叠的聚类。我们的实验结果表明,提出的算法能够处理噪声,同时找到适当数量的聚类,而无需手动设置最小聚类大小。

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