Thursday 25th of April 2024
 

Improving the Performance of Multi-class Intrusion Detection Systems using Feature Reduction


Yasmen Mohamed Essam Eldin Wahba, Ehab Elsalamouny and Ghada Eltaweel

Intrusion detection systems (IDS) are widely studied by researchers nowadays due to the dramatic growth in network-based technologies. Policy violations and unauthorized access is in turn increasing which makes intrusion detection systems of great importance. Existing approaches to improve intrusion detection systems focus on feature selection or reduction since some features are irrelevant or redundant which when removed improve the accuracy as well as the learning time. In this paper we propose a hybrid feature selection method using Correlation-based Feature Selection and Information Gain. In our work we apply adaptive boosting using nave Bayes as the weak (base) classifier. The key point in our research is that we are able to improve the detection accuracy with a reduced number of features while precisely determining the attack. Experimental results showed that our proposed method achieved high accuracy compared to methods using only 5-class problem. Correlation is done using Greedy search strategy and nave Bayes as the classifier on the reduced NSL-KDD dataset.

Keywords: intrusion detection systems (IDS), feature selection, Correlation, Information Gain, Weka, AdaBoost

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ABOUT THE AUTHORS

Yasmen Mohamed Essam Eldin Wahba
graduated from faculty of computers and informatics, suez canal university. worked as a teaching assitant at the computer science department. preparing master degree in Network Intrusion Detection

Ehab Elsalamouny
Faculty of Computers and Informatics, Suez Canal University Ismailia, Egypt

Ghada Eltaweel
Faculty of Computers and Informatics, Suez Canal University Ismailia, Egypt


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