A comparative study of support vector machine and logistic regression article · January 021 citations reads 11 authors



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16ACOMPARATIVESTUDYOFSUPPORTVECTORMACHINEANDLOGISTIC

 
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RIENTAL JOURNAL OF SCIENCE & ENGINEERING VOL -2, ISS-1, FEB - 2021 
www.ojse.org
ojse©2019 

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