A Comparative Analysis on Artificial Neural Network-Based Two-Stage Clustering

Authors

  • Cheng-Ching Chang Author
  • Ssu-Han Chen Author

DOI:

https://doi.org/10.70705/ppp.doaj.2023.v02.i01.pp10-15

Keywords:

Two-stage clustering, k-means algorithm, Self-organizing feature map, Adaptive resonance theory

Abstract

The artificial neural network (ANN), which is capable of noise removal and data complexity reduction, has been regarded as
one of outstanding intermediaries in the two-stage clustering procedures. Various ANN-based two-stage clustering procedures
have been individually proposed; however, the performance among those methods has not been examined yet. In this study, a
preliminary comparative analysis is conducted in four benchmark data-sets and a real-world market data-set, which are used to
simulate various conditions for evaluation purposes. The experiment results suggest that high-accuracy self-organizing feature
map can potentially improve the effectiveness of decision-making.

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Published

2023-02-09

How to Cite

A Comparative Analysis on Artificial Neural Network-Based Two-Stage Clustering. (2023). DevOps-An Open Access Journal , 2(1), 10-15. https://doi.org/10.70705/ppp.doaj.2023.v02.i01.pp10-15