2023
DOI: 10.3390/app13106342
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VSFCM: A Novel Viewpoint-Driven Subspace Fuzzy C-Means Algorithm

Abstract: Nowadays, most fuzzy clustering algorithms are sensitive to the initialization results of clustering algorithms and have a weak ability to handle high-dimensional data. To solve these problems, we developed the viewpoint-driven subspace fuzzy c-means (VSFCM) algorithm. Firstly, we propose a new cut-off distance. Based on this, we establish the cut-off distance-induced clustering initialization (CDCI) method and use it as a new strategy for cluster center initialization and viewpoint selection. Secondly, by tak… Show more

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Cited by 2 publications
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“…Most clustering algorithms have a weak ability to handle high-dimensional data [39,40]. Moreover, graph-enhancement-based event feature optimization further increases the event feature dimension.…”
Section: Dbn-enhanced Dbscan For Event Clusteringmentioning
confidence: 99%
“…Most clustering algorithms have a weak ability to handle high-dimensional data [39,40]. Moreover, graph-enhancement-based event feature optimization further increases the event feature dimension.…”
Section: Dbn-enhanced Dbscan For Event Clusteringmentioning
confidence: 99%