Centroid neural network for unsupervised competitive learning

@article{Park2000CentroidNN,
  title={Centroid neural network for unsupervised competitive learning},
  author={Dong-Chul Park},
  journal={IEEE transactions on neural networks},
  year={2000},
  volume={11 2},
  pages={
          520-8
        }
}
  • Dong-Chul Park
  • Published 1 March 2000
  • Computer Science
  • IEEE transactions on neural networks
An unsupervised competitive learning algorithm based on the classical -means clustering algorithm is proposed. [] Key Method The CNN algorithm requires neither a predetermined schedule for learning coefficient nor a total number of iterations for clustering. The simulation results on clustering problems and image compression problems show that CNN converges much faster than conventional algorithms with compatible clustering quality while other algorithms may give unstable results depending on the initial…
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