COMPARISON OF PURITY AND ENTROPY OF K-MEANS CLUSTERING AND FUZZY C MEANS CLUSTERING

Journal Title: Indian Journal of Computer Science and Engineering - Year 2011, Vol 2, Issue 3

Abstract

Clustering is one the main area in data mining literature. There are various algorithms for clustering. The evaluation of the performance is done by validation measures. The external validation measures are used to measure the extent to which cluster labels affirm with the externally given class labels. The aim of this paper is to compare the for K-means and Fuzzy C means clustering using the Purity and Entropy. The data used for evaluating the external measures is medical data.

Authors and Affiliations

Satya Chaitanya Sripada , Dr. M. Sreenivasa Rao

Keywords

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  • EP ID EP113659
  • DOI -
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How To Cite

Satya Chaitanya Sripada, Dr. M. Sreenivasa Rao (2011). COMPARISON OF PURITY AND ENTROPY OF K-MEANS CLUSTERING AND FUZZY C MEANS CLUSTERING. Indian Journal of Computer Science and Engineering, 2(3), 343-346. https://europub.co.uk/articles/-A-113659