A New Density Peak Clustering Algorithm for Automatically Determining Clustering Centers

Zhechuan Wang, Yuping Wang
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引用次数: 1

Abstract

Density Peaks Clustering (DPC) tries to use two objectives: density and peaks, to automatically determine the number of clusters. It is claimed to be applicable to data sets with non-spherical clusters. However, the cutoff distance dc in DPC should be determined based on the experience of decision maker and the cluster centers should be selected manually. But it is very difficult to do so and improper selection of these will result in incorrect results. In order to overcome these shortcomings, an adaptive cutoff distance computing method based on Gini index is proposed firstly, and then the possibility (i.e., multiplication of the local density and the relative distance y=ρiδi) of each point xi as a cluster center is calculated, moreover, the point with the maximal change of possibility is determined as the critical point. Each point whose possibility is larger than that of the critical point will be a cluster center. In this way, both the number of clusters and cluster centers can be automatically determined, and the manually selecting the cluster centers through the decision graph in DPC can be avoided. Based on these, a new density peak clustering algorithm by automatically determining both the number of clusters and cluster centers is proposed. Finally, experiments are conducted and the results show that the new algorithm can not only automatically determine the cluster center, but also has higher accuracy than DPC.
一种新的自动确定聚类中心的密度峰值聚类算法
密度峰值聚类(DPC)尝试使用密度和峰值两个目标来自动确定聚类的数量。声称它适用于具有非球形簇的数据集。但是,DPC中的截止距离dc需要根据决策者的经验来确定,并且需要人工选择聚类中心。但要做到这一点是非常困难的,而且这些方法的选择不当会导致错误的结果。为了克服这些缺点,首先提出了一种基于基尼指数的自适应截断距离计算方法,然后计算每个点xi作为聚类中心的可能性(即局部密度与相对距离y=ρiδi的乘积),并确定可能性变化最大的点作为临界点。每个可能性大于临界点的点作为聚类中心。这样既可以自动确定聚类数量,又可以自动确定聚类中心,避免了在DPC中通过决策图手动选择聚类中心的问题。在此基础上,提出了一种自动确定聚类数量和聚类中心的密度峰值聚类算法。实验结果表明,新算法不仅可以自动确定聚类中心,而且比DPC算法具有更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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