多峰流形数据的鲁棒密度峰聚类

IF 18.6
Ling Ding;Chao Li;Shifei Ding;Xiao Xu;Lili Guo;Xindong Wu
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引用次数: 0

摘要

密度峰聚类(DPC)是一种不需要任何先验知识的优秀聚类算法。然而,DPC仍然存在以下缺点:(1)它所使用的欧氏距离不适用于多峰流形数据。(2) DPC的局部密度计算过于简单,最终结果可能会受到截止距离dc的影响而波动。(3)通过决策图手工选择中心可能导致聚类数量错误,性能不佳。针对这些不足,提出了一种多峰流形数据的鲁棒密度峰聚类算法(RDPCM),降低聚类结果对参数的敏感性。在DPC-GD的激励下,RDPCM将欧氏距离替换为测地线距离,并通过改进的相互k近邻进行优化。该方法较好地考虑了数据集的局部流形结构,取得了较好的效果。此外,提出了基于最小生成树(MDBI)的Davies-Bouldin指数自适应选择理想的类数。大量实验表明,RDPCM比其他先进的聚类算法更有效、更优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Density Peaks Clustering for Manifold Data With Multiple Peaks
Density peaks clustering (DPC) is an excellent clustering algorithm that does not need any prior knowledge. However, DPC still has the following shortcomings: (1) The Euclidean distance used by it is not applicable to manifold data with multiple peaks. (2) The local density calculation for DPC is too simple, and the final results may fluctuate due to the cutoff-distance dc. (3) Manually selected centers by decision-graph may lead to a wrong number of clusters and poor performance. To address these shortcomings and improve the performance, a robust density peaks clustering algorithm for manifold data with multiple peaks (RDPCM) is proposed to reduce the sensitivity of clustering results to parameters. Motivated by DPC-GD, RDPCM replaces the Euclidean distance with geodesic distance, which is optimized by the improved mutual K-nearest neighbors. It better considers the local manifold structure of the datasets and obtains excellent results. In addition, the Davies-Bouldin Index based on Minimum Spanning Tree (MDBI) is proposed to select the ideal number of classes adaptively. Numerous experiments have established that RDPCM is more effective and superior than other advanced clustering algorithms.
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