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Clustering by Detecting Density Peaks and Assigning Points by Similarity-First Search Based on Weighted K-Nearest Neighbors Graph

机译:通过基于加权k-最近邻居图来检测密度峰值和分配点来通过相似性 - 首先搜索分配点

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This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Most of the conventional clustering approaches work only with round-shaped clusters. This task can be accomplished by quickly searching and finding clustering methods for density peaks (DPC), but in some cases, it is limited by density peaks and allocation strategy. To overcome these limitations, two improvements are proposed in this paper. To describe the clustering center more comprehensively, the definitions of local density and relative distance are fused with multiple distances, including K-nearest neighbors (KNN) and shared-nearest neighbors (SNN). A similarity-first search algorithm is designed to search the most matching cluster centers for noncenter points in a weighted KNN graph. Extensive comparison with several existing DPC methods, e.g., traditional DPC algorithm, density-based spatial clustering of applications with noise (DBSCAN), affinity propagation (AP), FKNN-DPC, and K-means methods, has been carried out. Experiments based on synthetic data and real data show that the proposed clustering algorithm can outperform DPC, DBSCAN, AP, and K-means in terms of the clustering accuracy (ACC), the adjusted mutual information (AMI), and the adjusted Rand index (ARI).
机译:本文提出了一种改进的聚类算法,用于将数据分类为任意形状。大多数传统的聚类方法仅使用圆形簇工作。该任务可以通过快速搜索和查找密度峰(DPC)的聚类方法来实现,但在某些情况下,它受密度峰和分配策略的限制。为了克服这些限制,本文提出了两种改进。为了更全面地描述聚类中心,局部密度和相对距离的定义与多个距离融合,包括k-最近邻居(knn)和共享最近的邻居(SNN)。相似性 - 第一搜索算法旨在搜索加权KNN图中的非中心点的最匹配的集群中心。已经进行了与若干现有DPC方法的广泛比较,例如,传统的DPC算法,具有噪声(DBSCAN),亲和传播(AP),FKNN-DPC和K-MEATIOM的应用的基于密度的空间聚类。基于合成数据和实际数据的实验表明,在聚类精度(ACC)的群集精度(ACC)方面,所提出的聚类算法可以胜过DPC,DBSCAN,AP和K均值,调整后的相互信息(AMI)和调整后的rand索引( ARI)。

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