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Investigating the Impact of Feature Reduction Through Information Gain and Correlation on the Performance of Error Back Propagation Based IDS

Author(s): Ghanshyam Prasad Dubey and Dr. Rakesh Kumar Bhujade*

Publisher : FOREX Publication

Published : 30 July 2021

e-ISSN : 2347-470X

Page(s) : 27-34




Ghanshyam Prasad Dubey, RS, DoCSE, Mandsaur University, India

Dr. Rakesh Kumar Bhujade*, Head, DoIT, Govt. Polytechnic, Daman, India; Email: rakesh.bhujade@gmail.com

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Ghanshyam Prasad Dubey and Dr. Rakesh Kumar Bhujade (2021), Investigating the Impact of Feature Reduction Through Information Gain and Correlation on the Performance of Error Back Propagation Based IDS. IJEER 9(3), 27-34. DOI: 10.37391/IJEER.090302.