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Improving Density Peak Clustering by Automatic Peak Selection and Single Linkage Clustering

Jun-Lin Lin, Jen-Chieh Kuo, Hsing-Wang Chuang

2020Symmetry22 citationsDOIOpen Access PDF

Abstract

Density peak clustering (DPC) is a density-based clustering method that has attracted much attention in the academic community. DPC works by first searching density peaks in the dataset, and then assigning each data point to the same cluster as its nearest higher-density point. One problem with DPC is the determination of the density peaks, where poor selection of the density peaks could yield poor clustering results. Another problem with DPC is its cluster assignment strategy, which often makes incorrect cluster assignments for data points that are far from their nearest higher-density points. This study modifies DPC and proposes a new clustering algorithm to resolve the above problems. The proposed algorithm uses the radius of the neighborhood to automatically select a set of the likely density peaks, which are far from their nearest higher-density points. Using the potential density peaks as the density peaks, it then applies DPC to yield the preliminary clustering results. Finally, it uses single-linkage clustering on the preliminary clustering results to reduce the number of clusters, if necessary. The proposed algorithm avoids the cluster assignment problem in DPC because the cluster assignments for the potential density peaks are based on single-linkage clustering, not based on DPC. Our performance study shows that the proposed algorithm outperforms DPC for datasets with irregularly shaped clusters.

Topics & Concepts

Cluster analysisSelection (genetic algorithm)Cluster (spacecraft)Single-linkage clusteringComplete-linkage clusteringk-medians clusteringDetermining the number of clusters in a data setCorrelation clusteringSet (abstract data type)Computer scienceComplete linkageLinkage (software)Point (geometry)Nearest-neighbor chain algorithmData miningPattern recognition (psychology)CURE data clustering algorithmMathematicsArtificial intelligenceCanopy clustering algorithmChemistrySingle-nucleotide polymorphismBiochemistryGenotypeGeometryProgramming languageGeneAdvanced Clustering Algorithms ResearchComplex Network Analysis TechniquesBayesian Methods and Mixture Models
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