2003
DOI: 10.1109/tnn.2003.811354
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Two-stage clustering via neural networks

Abstract: This paper presents a two-stage approach that is effective for performing fast clustering. First, a competitive neural network (CNN) that can harmonize mean squared error and information entropy criteria is employed to exploit the substructure in the input data by identifying the local density centers. A Gravitation neural network (GNN) then takes the locations of these centers as initial weight vectors and undergoes an unsupervised update process to group the centers into clusters. Each node (called gravi-nod… Show more

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Cited by 19 publications
(1 citation statement)
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References 26 publications
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“…Then, the encoder acts as a latent feature extractor and uses a clustering algorithm to train it simultaneously. The two-stage clustering methods have been successfully applied in many research works [12,13]. Later on, one-stage clustering methods that jointly accomplish feature transformation and clustering is developed as an alternative approach.…”
Section: Deep Clusteringmentioning
confidence: 99%
“…Then, the encoder acts as a latent feature extractor and uses a clustering algorithm to train it simultaneously. The two-stage clustering methods have been successfully applied in many research works [12,13]. Later on, one-stage clustering methods that jointly accomplish feature transformation and clustering is developed as an alternative approach.…”
Section: Deep Clusteringmentioning
confidence: 99%