Title of article :
Feature Selection for Black Hole Attacks
Author/Authors :
Bani Yassein, Muneer Edinburgh Napier University - School of Computing, UK , Bani Yassein, Muneer Jordan University of Science and Technology - Department of Computer Science, Jordan , Khamayseh, Yaser Jordan University of Science and Technology - Department of Computer Science, Jordan , Abu Jazoh, Mai Jordan University of Science and Technology - Department of Computer Science, Jordan
From page :
521
To page :
536
Abstract :
The security issue is essential and more challenging in Mobile Ad-Hoc Network (MANET) due to its characteristics such as, node mobility, self-organizing capability and dynamic topology. MANET is vulnerable to different types of attacks. One of possible attacks is black hole attack. Black hole attack occurs when a malicious node joins the network with the aim of intercepting data packets which are exchanged across the network and dropping them which affects the performance of the network and its connectivity. This paper proposes a new dataset (BDD dataset) for black hole intrusion detection systems which contributes to detect the black hole nodes in MANET. The proposed dataset contains a set of essential features to build an efficient learning model where these features are selected carefully using one of the feature selection techniques which is information gain technique J48 decision tree, Naïve Bayes (NB) and Sequential Minimal Optimization (SMO) classifiers are learned using training data of BDD dataset and the performance of these classifiers is evaluated using a learning machine tool Weka 3.7.11. The obtained performance results indicate that using the proposed dataset features succeeded in build an efficient learning model to train the previous classifiers to detect the black hole attack.
Keywords :
Black hole attack , Intrusion Detection System (IDS) , information gain , decision tree J48 , Naïve Bayes (NB) , Sequential Minimal Optimization(SMO) , BDD dataset
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2715379
Link To Document :
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