• Journal of Innovative Optical Health Sciences
  • Vol. 7, Issue 1, 1450018 (2014)
S. R. KANNAN1、*, S. RAMTHILAGAM2, R. DEVI1, and T. P. HONG3
Author Affiliations
  • 1Department of Mathematics Pondicherry Central University, India
  • 2Department of Mathematics Periyar Government College, Tamil Nadu
  • 3Department of Computer Science and Information Engineering National University of Kaohsiung, Taiwan,China
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    DOI: 10.1142/s1793545814500187 Cite this Article
    S. R. KANNAN, S. RAMTHILAGAM, R. DEVI, T. P. HONG. FUZZY C-MEANS IN FINDING SUBTYPES OF CANCERS IN CANCER DATABASE[J]. Journal of Innovative Optical Health Sciences, 2014, 7(1): 1450018 Copy Citation Text show less

    Abstract

    Finding subtypes of cancer in breast cancer database is an extremely difficult task because of heavy noise by measurement error. Most of the recent clustering techniques for breast cancer database to achieve cancerous and noncancerous often weigh down the interpretability of the structure. Hence, this paper tries to find effective Fuzzy C-Means-based clustering techniques to identify the proper subtypes of cancer in breast cancer database. This paper obtains the objective function of effective Fuzzy C-Means clustering techniques by incorporating the kernel induced distance function, Renyi's entropy function, weighted distance measure and neighborhood termsbased spatial context. The effectiveness of the proposed methods are proved through the experimental works on Lung cancer database, IRIS dataset, Wine dataset, Checkerboard dataset, Time Series dataset and Yeast dataset. Finally, the proposed methods are implemented successfully to cluster the breast cancer database into cancerous and noncancerous. The clustering accuracy has been validated through error matrix and silhouette method.
    S. R. KANNAN, S. RAMTHILAGAM, R. DEVI, T. P. HONG. FUZZY C-MEANS IN FINDING SUBTYPES OF CANCERS IN CANCER DATABASE[J]. Journal of Innovative Optical Health Sciences, 2014, 7(1): 1450018
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