Canonical PSO Based K -Means Clustering Approach for Real Datasets

  • Dey L
  • Chakraborty S
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Abstract

“Clustering” the significance and application of this technique is spread over various fields. Clustering is an unsupervised process in data mining, that is why the proper evaluation of the results and measuring the compactness and separability of the clusters are important issues. The procedure of evaluating the results of a clustering algorithm is known as cluster validity measure. Different types of indexes are used to solve different types of problems and indices selection depends on the kind of available data. This paper first proposes Canonical PSO based K -means clustering algorithm and also analyses some important clustering indices (intercluster, intracluster) and then evaluates the effects of those indices on real-time air pollution database, wholesale customer, wine, and vehicle datasets using typical K -means, Canonical PSO based K -means, simple PSO based K -means, DBSCAN, and Hierarchical clustering algorithms. This paper also describes the nature of the clusters and finally compares the performances of these clustering algorithms according to the validity assessment. It also defines which algorithm will be more desirable among all these algorithms to make proper compact clusters on this particular real life datasets. It actually deals with the behaviour of these clustering algorithms with respect to validation indexes and represents their results of evaluation in terms of mathematical and graphical forms.

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APA

Dey, L., & Chakraborty, S. (2014). Canonical PSO Based  K  -Means Clustering Approach for Real Datasets. International Scholarly Research Notices, 2014, 1–11. https://doi.org/10.1155/2014/414013

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