Hybrid feature selection for supporting lightweight intrusion detection systems

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Abstract

Redundant and irrelevant features not only cause high resource consumption but also degrade the performance of Intrusion Detection Systems (IDS), especially when coping with big data. These features slow down the process of training and testing in network traffic classification. Therefore, a hybrid feature selection approach in combination with wrapper and filter selection is designed in this paper to build a lightweight intrusion detection system. Two main phases are involved in this method. The first phase conducts a preliminary search for an optimal subset of features, in which the chi-square feature selection is utilized. The selected set of features from the previous phase is further refined in the second phase in a wrapper manner, in which the Random Forest(RF) is used to guide the selection process and retain an optimized set of features. After that, we build an RF-based detection model and make a fair comparison with other approaches. The experimental results on NSL-KDD datasets show that our approach results are in higher detection accuracy as well as faster training and testing processes.

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APA

Song, J., Zhao, W., Liu, Q., & Wang, X. (2017). Hybrid feature selection for supporting lightweight intrusion detection systems. In Journal of Physics: Conference Series (Vol. 887). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/887/1/012031

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