一种基于动态局部密度的密度聚类方法

Jian-chun Lu, Quanwang Wu, Chunling Wu
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引用次数: 0

摘要

基于密度的聚类算法可以发现任意形状的聚类,并且对噪声具有较强的鲁棒性,是数据挖掘的一个重要研究方向。局部密度估计广泛应用于聚类和离群点检测任务中。传统上,数据挖掘通常采用基于距离和基于统计的局部密度估计方法。然而,局部密度估计模型在聚类中的有效性和稳定性还有待提高。本文提出了一种基于动态局部密度估计的密度聚类方法。首先,我们展示了泊松分布来拟合反向k近邻计数的分布,并描述了动态局部密度估计模型。其次,基于动态局部密度构造聚类顺序。最后,建立了密度聚类的决策图,并利用识别出的断点将聚类顺序划分为多个聚类。实验结果表明,新的动态局部密度估计模型是有效的,有助于提高密度聚类的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Density Clustering Method based on Dynamic Local Density
Density-based clustering is an important research direction of data mining because density-based clustering algorithms can find clusters with arbitrary shape and are robust to noises. Local density estimation is widely used in the task of clustering and outlier detection. Traditionally, distance-based and statistic-based local density estimation methods are usually adopted for data mining. However, the effectiveness and stability of local density estimation models for clustering are still to be improved. In this paper, we propose a novel density clustering method based on dynamic local density estimation. First, we show Poisson distribution to fit the distribution of reverse $k$ nearest neighbor counts and describe the model of dynamic local density estimation. Second, we construct a cluster order based on dynamic local density. Finally, decision graph is developed for density clustering and the identified break points partition the cluster order into clusters. Experiment results show that the new dynamic local density estimation model is effective and can help improve the performance of density clustering.
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