通过寻找平均密度聚类

Wenkang Huang, Mengting Fan, Suhang Yang, Junqing Yuan, Xiongxiong He
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引用次数: 0

摘要

密度峰值聚类(DPC)算法对低维数据集的聚类效果较好。然而,对于高维数据集,聚类中心区域存在许多节点;它们的密度相对较高且彼此接近,难以准确识别中心节点。研究发现,随着数据集维数的增加,传统DPC算法的精度急剧下降。为了解决密度难以区分的问题,提出了一种新的聚类方法——平均密度聚类(CFAD),该方法可以增强高维数据集的聚类效果。实验表明,该算法在人工数据集和真实数据集上都优于DPC算法。
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Clustering by Finding Average Density
Density Peak Clustering (DPC) algorithm can get better clustering results of data sets with lower dimensions. However, for the high-dimensional data sets, there are many nodes in the clustering center area; their densities are relatively high and close to each other, so that it is hard to identify the centering node accurately. It is found that the accuracy of the traditional DPC algorithm decreases terribly with the increasing of data set dimensions. In order to deal with the indistinguishable density problem, we propose a new clustering method, called Clustering by Finding Average Density (CFAD), which can enhance the clustering effect of high-dimensional data sets. Experiments show that the proposed algorithm outperforms DPC for both the artificial and the real data sets.
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