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International Journal of Statistika and Mathematika, ISSN: 2277- 2790 E-ISSN: 2249-8605

Volume 4, Issue 3, 2013 pp 74-80

Research Article

Comparison of Support Vector Machines and Linear Discriminant Analysis for Indian Industries

 

R. Madhanagopal1, R.C. Avinaash2 and K. Karthick3

{1Assistant Professor, 2, 3 Post Graduate Students} Department of Statistics, Madras Christian College, Chennai, Tamil Nadu, INDIA.

Academic Editor: Dr. Dase R.K.

 

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