Online Adaboost-Based Parameterized Methods for Dynamic Distributed Network Intrusion Detection

Current network intrusion detection systems lack adaptability to the frequently changing network environments. Furthermore, intrusion detection in the new distributed architectures is now a major requirement. In this paper, we propose two online Adaboost-based intrusion detection algorithms. In the...

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Bibliographic Details
Published inIEEE transactions on cybernetics Vol. 44; no. 1; pp. 66 - 82
Main Authors Hu, Weiming, Gao, Jun, Wang, Yanguo, Wu, Ou, Maybank, Stephen
Format Journal Article
LanguageEnglish
Published United States IEEE 01.01.2014
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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Summary:Current network intrusion detection systems lack adaptability to the frequently changing network environments. Furthermore, intrusion detection in the new distributed architectures is now a major requirement. In this paper, we propose two online Adaboost-based intrusion detection algorithms. In the first algorithm, a traditional online Adaboost process is used where decision stumps are used as weak classifiers. In the second algorithm, an improved online Adaboost process is proposed, and online Gaussian mixture models (GMMs) are used as weak classifiers. We further propose a distributed intrusion detection framework, in which a local parameterized detection model is constructed in each node using the online Adaboost algorithm. A global detection model is constructed in each node by combining the local parametric models using a small number of samples in the node. This combination is achieved using an algorithm based on particle swarm optimization (PSO) and support vector machines. The global model in each node is used to detect intrusions. Experimental results show that the improved online Adaboost process with GMMs obtains a higher detection rate and a lower false alarm rate than the traditional online Adaboost process that uses decision stumps. Both the algorithms outperform existing intrusion detection algorithms. It is also shown that our PSO, and SVM-based algorithm effectively combines the local detection models into the global model in each node; the global model in a node can handle the intrusion types that are found in other nodes, without sharing the samples of these intrusion types.
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ISSN:2168-2267
2168-2275
DOI:10.1109/TCYB.2013.2247592