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首页> 外文期刊>International Journal of Intelligent Systems >New internal clustering validation measure for contiguous arbitrary-shape clusters
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New internal clustering validation measure for contiguous arbitrary-shape clusters

机译:连续任意形状群集的新内部聚类验证度量

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In this study a new internal clustering validation index is proposed. It is based on a measure of the uniformity of the data in clusters. It uses the local density of each cluster, in particular, the normalized variability of the density within the clusters to find the ideal partition. The new validity measure allows it to capture the spatial pattern of the data and obtain the right number of clusters in an automatic way. This new approach, unlike the traditional one that usually identifies well-separated compact clouds, works with arbitrary-shape clusters that may be contiguous or even overlapped. The proposed clustering measure has been evaluated on nine artificial data sets, with different cluster distributions and an increasing number of classes, on three highly nonlinear data sets, and on 17 real data sets. It has been compared with nine well-known clustering validation indices with very satisfactory results. This proves that including density in the definition of clustering validation indices may be useful to identify the right partition of arbitrary-shape and different-size clusters.
机译:在本研究中,提出了一种新的内部聚类验证指数。它基于群集中数据均匀性的量度。它使用每个群集的局部密度,特别是群集中密度的归一化变化,以找到理想的分区。新的有效性测量允许它捕获数据的空间模式,并以自动方式获得正确的群集数。与通常识别分离良好的紧凑云的传统的新方法不同,适用于可以是连续甚至重叠的任意形状的簇。已经在九个人工数据集中评估了所提出的聚类措施,其中包含不同的群集分布和越来越多的类,在三个高度非线性数据集上以及17个真实数据集上。它与九九众所周知的聚类验证指数进行了比较,具有非常令人满意的结果。这证明包括聚类验证指数定义中的密度可用于识别任意形状和不同大小集群的右分区。

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