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Binary Classification of Network-Generated Flow Data Using a Machine Learning Algorithm

Author

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  • Sikha Bagui

    (University of West Florida, USA)

  • Keenal M. Shah

    (University of West Florida, USA)

  • Yizhi Hu

    (University of West Florida, USA)

  • Subhash Bagui

    (University of West Florida, USA)

Abstract

This study proposes a model for building intrusion detection systems. The dataset used, CICIDS 2017, contains 14 different attacks with 85 features for each attack. This high dimensionality of the data is a major challenge when building efficient intrusion detection systems, especially in today's big data environment, since a lot of the features are redundant. The main goal in this paper was to reduce the number of features and present a detailed discussion of the important features. For feature selection, information gain was used in an iterative way, and for classification, a machine learning algorithm, the J48 decision tree algorithm, was used. The important features for the classification of each attack were identified, and the features that were important for classifying multiple attacks were also identified and discussed.

Suggested Citation

  • Sikha Bagui & Keenal M. Shah & Yizhi Hu & Subhash Bagui, 2021. "Binary Classification of Network-Generated Flow Data Using a Machine Learning Algorithm," International Journal of Information Security and Privacy (IJISP), IGI Global, vol. 15(1), pages 26-43, January.
  • Handle: RePEc:igg:jisp00:v:15:y:2021:i:1:p:26-43
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