Classification of Firewall Log Files Using Supervised Machine Learning Techniques

Author:

Sri Danalaksmi 1,Geethalakshmi 1,Roshni A.1,Ganapathi Padmavathi1

Affiliation:

1. Avinashilingam Institute for Home Science and Higher Education for Women, India

Abstract

A firewall prevents traffic entering and departing the domain it was supposed to protect. The logging feature keeps track of how the firewall handles different sorts of traffic. Monitoring and analyzing log files can assist IT businesses in improving the end-user reliability of their systems. This book chapter investigates and classifies the firewall log files using supervised machine learning algorithms. The main objective of this chapter is to examine firewall security by analyzing the firewall log files. Supervised machine learning classifiers such as support vector machine (SVM), Naïve Bayes, logistic regression and k-nearest neighbor (KNN) models are developed to classify the firewall log files. Feature selection using Ranker and Info_Gain_Attribute_Eval methods within the Weka tool is applied to derive the robust features from the data. Finally, a comparative analysis is performed to evaluate the efficiency of the supervised machine learning models. Results that, the Naïve Bayes Classifier attains the highest accuracy of 99.26% for the classification of firewall log files.

Publisher

IGI Global

Reference32 articles.

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5. As-Suhabni, H. E. Q., & Khamitkar, S. D. Dr. (2020a, February 25). Discovering anomalous rules in firewall logs using data mining and machine learning classifiers. International Journal of Scientific & Technology Research.https://www.ijstr.org/paper-references.php?ref=IJSTR-0120-29748.

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