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    Data Augmentation for Intrusion Detection and Classification in Cloud Networks

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    Date
    2021
    Author
    Chkirbene, Zina
    Abdallah, Habib Ben
    Hassine, Kawther
    Hamila, Ridha
    Erbad, Aiman
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    Abstract
    Cloud computing is a paradigm that provides multiple services over the internet with high flexibility in a cost-effective way. However, the growth of cloud-based services comes with major security issues. Recently, machine learning techniques are gaining much interest in security applications as they exhibit fast processing capabilities with real-time predictions. One major challenge in the implementation of these techniques is the available training data for each new potential attack category. In this paper, we propose a new model for secure network based on machine learning algorithms. The proposed model ensures better learning of minority classes using Generative Adversarial Network (GAN) architecture. In particular, the new model optimizes the GAN parameter including the number of inner learning steps for the discriminator to balance the training datasets. Then, the optimized GAN generates highly informative"like real" instances to be appended to the original data which improve the detection of the classes with relatively small training data. Our experimental results show that the proposed approach enhances the overall classification performance and detection accuracy even for the rarely detectable classes for both UNSW and NSL-KDD datasets. The simulation results show also that the proposed model could detect better the network attacks compared to the state-of-art techniques. 2021 IEEE
    DOI/handle
    http://dx.doi.org/10.1109/IWCMC51323.2021.9498633
    http://hdl.handle.net/10576/41615
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    • Computer Science & Engineering [‎2429‎ items ]
    • Electrical Engineering [‎2840‎ items ]

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