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A dynamic MLP-based DDoS attack detection method using feature selection and feedback

机译:基于特征选择和反馈的基于MLP的动态DDoS攻击检测方法

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Distributed Denial of Service (DDoS) attack is a stubborn network security problem. Various machine learning-based methods have been proposed to detect such attacks. According to our survey, the features used to characterize the attack are usually selected manually according to some personal understanding, and the detection model is expected to perform good generalization performance in practical detection all the time. Therefore, how to select the optimal features that perform the best performance is a critical problem for constructing an effective detector. Meanwhile, as network traffic gets increasingly complex and changeable, some original features may become incapable of characterizing current traffic, and detector failure could occur when traffic changes. In this paper, we chose the multilayer perceptions (MLP) to demonstrate and solve the proposed problem. In our solution, we combined sequential feature selection with MLP to select the optimal features during the training phase and designed a feedback mechanism to reconstruct the detector when perceiving considerable detection errors dynamically. Finally, we validated the effectiveness of our method and compared it with some related works. The results showed that our method could yield comparable detection performance and correct the detector when it performed poorly. (C) 2019 The Author(s). Published by Elsevier Ltd.
机译:分布式拒绝服务(DDoS)攻击是一个顽固的网络安全问题。已经提出了各种基于机器学习的方法来检测这种攻击。根据我们的调查,表征攻击的特征通常是根据一些个人理解手动选择的,并且期望该检测模型在实际检测中始终具有良好的泛化性能。因此,如何选择执行最佳性能的最佳特征是构造有效检测器的关键问题。同时,随着网络流量变得越来越复杂和多变,某些原始功能可能无法表征当前流量,并且流量变化时可能会发生检测器故障。在本文中,我们选择了多层感知(MLP)来演示和解决所提出的问题。在我们的解决方案中,我们将顺序特征选择与MLP相结合,以在训练阶段选择最佳特征,并设计了一种反馈机制,以在动态感知大量检测错误时重建检测器。最后,我们验证了该方法的有效性,并将其与一些相关工作进行了比较。结果表明,我们的方法可以产生可比的检测性能,并在性能不佳时对检测器进行校正。 (C)2019作者。由Elsevier Ltd.发布

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