Performance Evaluation of Supervised Machine Learning Algorithms for Intrusion Detection

Manjula, C B and Muniyal, Balachandra (2016) Performance Evaluation of Supervised Machine Learning Algorithms for Intrusion Detection. In: International Multi-Conference on Information Processing, 19/08/2016, Bangalore.

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Intrusion detection system plays an important role in network security. Intrusion detection model is a predictive model used to predict the network data traffic as normal or intrusion. Machine Learning algorithms are used to build accurate models for clustering, classification and prediction. In this paper classification and predictive models for intrusion detection are built by using machine learning classification algorithms namely Logistic Regression, Gaussian Naive Bayes, Support Vector Machine and Random Forest. These algorithms are tested with NSL-KDD data set. Experimental results shows that Random Forest Classifier out performs the other methods in identifying whether the data traffic is normal or an attack.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: Association rule; FP-tree; Frequent pattern data; Market Basket Analysis; Data Mining
Subjects: Engineering > MIT Manipal > Information and Communication Technology
Depositing User: MIT Library
Date Deposited: 20 Oct 2016 15:54
Last Modified: 20 Oct 2016 15:54

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