Application of the support vector machine to predict subclinical mastitis in dairy cattle.

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🔗 View Article (PMC 3886278)

Published in ScientificWorldJournal on December 25, 2013

Authors

Nazira Mammadova1, Ismail Keskin2

Author Affiliations

1: Department of Animal Science, Faculty of Agriculture, Siirt University, 56100 Siirt, Turkey.
2: Department of Animal Science, Faculty of Agriculture, Selçuk University, 42075 Konya, Turkey.

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