Cosine kernel based density peaks clustering algorithm

Jiayuan Wang, Li Lv, Runxiu Wu, Tanghuai Fan, Ivan Lee
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引用次数: 1

Abstract

Density peaks clustering (DPC) determines the density peaks according to density-distance, and local density computation significantly impacts the clustering performance of the DPC algorithm. Following this lead, a revised DPC algorithm based on cosine kernel is proposed and examined in this paper. The cosine kernel function uses local information of datasets to define the local density, which not only finds the position difference of different samples within the cutoff distance, but also balances the influence of centre points and boundary points of clusters on local density of samples. Theoretical analysis and experimental verification are included to demonstrate the proposed algorithm's improvement in clustering performance and computational time over the DPC algorithm.
基于余弦核的密度峰聚类算法
密度峰聚类(DPC)算法根据密度-距离确定密度峰,局部密度计算对DPC算法的聚类性能有重要影响。在此基础上,本文提出了一种基于余弦核的改进DPC算法。余弦核函数利用数据集的局部信息定义局部密度,既能找到不同样本在截止距离内的位置差,又能平衡聚类中心点和边界点对样本局部密度的影响。理论分析和实验验证表明,该算法在聚类性能和计算时间上都优于DPC算法。
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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