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On the combination of data augmentation method and gated convolution model for building effective and robust intrusion detection

机译:关于数据增强方法和门控卷积模型的组合,用于建立有效且鲁棒入侵检测

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Deep learning (DL) has exhibited its exceptional performance in fields like intrusion detection. Various augmentation methods have been proposed to improve data quality and eventually to enhance the performance of DL models. However, the classic augmentation methods cannot be applied to those DL models which exploit the system-call sequences to detect intrusion. Previously, the seq2seq model has been explored to augment system-call sequences. Following this work, we propose a gated convolutional neural network (GCNN) model to thoroughly extract the potential information of augmented sequences. Also, in order to enhance the model’s robustness, we adopt adversarial training to reduce the impact of adversarial examples on the model. Adversarial examples used in adversarial training are generated by the proposed adversarial sequence generation algorithm. The experimental results on different verified models show that GCNN model can better obtain the potential information of the augmented data and achieve the best performance. Furthermore, GCNN with adversarial training can enhance robustness significantly.
机译:深度学习(DL)在侵入检测等领域中表现出其特殊性能。已经提出了各种增强方法来提高数据质量,最终提高DL模型的性能。然而,经典增强方法不能应用于利用系统呼叫序列来检测入侵的那些DL模型。以前,SEQ2SEQ模型已探讨增强系统呼叫序列。在这项工作之后,我们提出了一个门控卷积神经网络(GCNN)模型,以彻底提取增强序列的潜在信息。此外,为了提高模型的鲁棒性,我们采用对抗训练来减少对策对模型的影响。通过提出的对冲序列生成算法产生对抗对抗训练的对抗实例。不同验证模型的实验结果表明,GCNN模型可以更好地获得增强数据的潜在信息并实现最佳性能。此外,具有对抗性训练的GCNN可以显着提高鲁棒性。

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