无边界自然邻居聚类算法

Luzou Zhang, Yunjie Zhang, Yulin Wang
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引用次数: 0

摘要

大多数基于密度的聚类算法只适用于球形数据集。在处理没有聚类中心的流线型数据集时,聚类结果存在一定的缺陷。为了解决流线型数据集的聚类问题,将自然邻居和离群点检测的概念结合起来,提出了一种去边界自然邻居聚类算法(NNC_wbo)。首先,建立KD树搜索数据之间的自然邻居关系,计算数据点的组内密度和组内离群度,设置参数去除边界数据;然后利用自然近邻关系得到初步聚类结果;如果初步聚类后,只有很少的数据点组成的小聚类,并且排除了异常值。
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Natural Neighbor Clustering Algorithm without Boundary
Most density-based clustering algorithms are only suitable for spherical data set. When processing streamlined data sets without cluster centers, the clustering results have certain defects. In order to deal with the clustering problem of streamlined data sets, the concept of natural neighbors and outlier detection are combined, and a boundary-removing natural neighbor clustering (NNC_wbo) algorithm is proposed. First, establish the natural neighbor relationship between the KD tree search data, calculate the intra-group density and intra-group outlier degree of the data points, set the parameters to remove the boundary data; then use the natural neighbor relationship to obtain the preliminary clustering results; if after the preliminary clustering, There are small clusters composed of very few data points, and outliers are excluded.
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