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A Small Sample DDoS Attack Detection Method Based on Deep Transfer Learning

机译:基于深度转移学习的小样本DDoS攻击检测方法

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When using deep learning for DDoS attack detection, there is a general degradation in detection performance due to small sample size. This paper proposes a small-sample DDoS attack detection method based on deep transfer learning. First, deep learning techniques are used to train several neural networks that can be used for transfer in DDoS attacks with sufficient samples. Then we design a transferability metric to compare the transfer performance of different networks. With this metric, the network with the best transfer performance can be selected among the four networks. Then for a small sample of DDoS attacks, this paper demonstrates that the deep learning detection technique brings deterioration in performance, with the detection performance dropping from 99.28% to 67%. Finally, we end up with a 20.8% improvement in detection performance by deep transfer of the 8LANN network in the target domain. The experiment shows that the detection method based on deep transfer learning proposed in this paper can well improve the performance deterioration of deep learning techniques for small sample DDoS attack detection.
机译:在将深度学习用于DDoS攻击检测时,由于样本量小,检测性能普遍下降。提出了一种基于深度转移学习的小样本DDoS攻击检测方法。首先,深度学习技术用于训练多个神经网络,这些网络可用于在具有足够样本的DDoS攻击中进行传输。然后,我们设计了一个可传输性度量标准,以比较不同网络的传输性能。使用此度量,可以在四个网络中选择传输性能最佳的网络。然后,对于一小部分DDoS攻击,本文证明了深度学习检测技术会导致性能下降,检测性能从99.28%下降到67%。最后,通过在目标域中深度传输8LANN网络,最终使检测性能提高了20.8%。实验表明,本文提出的基于深度转移学习的检测方法可以很好地改善深度学习技术在小样本DDoS攻击检测中的性能下降。

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