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Decision tree based light weight intrusion detection using a wrapper approach
Authors:Siva S. Sivatha Sindhu  S. Geetha  A. Kannan
Affiliation:a Department of Computer Science and Engineering, Anna University, Chennai 600025, India
b Department of Information Technology, Thiagarajar College of Engineering, Madurai 625015, India
Abstract:The objective of this paper is to construct a lightweight Intrusion Detection System (IDS) aimed at detecting anomalies in networks. The crucial part of building lightweight IDS depends on preprocessing of network data, identifying important features and in the design of efficient learning algorithm that classify normal and anomalous patterns. Therefore in this work, the design of IDS is investigated from these three perspectives. The goals of this paper are (i) removing redundant instances that causes the learning algorithm to be unbiased (ii) identifying suitable subset of features by employing a wrapper based feature selection algorithm (iii) realizing proposed IDS with neurotree to achieve better detection accuracy. The lightweight IDS has been developed by using a wrapper based feature selection algorithm that maximizes the specificity and sensitivity of the IDS as well as by employing a neural ensemble decision tree iterative procedure to evolve optimal features. An extensive experimental evaluation of the proposed approach with a family of six decision tree classifiers namely Decision Stump, C4.5, Naive Baye’s Tree, Random Forest, Random Tree and Representative Tree model to perform the detection of anomalous network pattern has been introduced.
Keywords:Intrusion Detection System   Misuse detection   Genetic algorithm   Neural network   Decision tree   Neurotree
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