Netinfo Security ›› 2022, Vol. 22 ›› Issue (12): 7-15.doi: 10.3969/j.issn.1671-1122.2022.12.002

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Anomaly Detection Model Based on Generative Adversarial Network and Autoencoder

GUO Sensen, WANG Tongli, MU Dejun()   

  1. Research & Development Institute of Northwestern Polytechnical University in Shenzhen, Shenzhen 518057, China
  • Received:2022-07-05 Online:2022-12-10 Published:2022-12-30
  • Contact: MU Dejun E-mail:mudejun@nwpu.edu.cn

Abstract:

In recent years, machine learning, especially deep learning algorithms, has been widely used in the field of network traffic intrusion detection, the distribution of dataset sample categories is an important factor affecting the performance of machine learning algorithms. To address the problem of diverse network attack categories and uneven distribution of existing network traffic dataset categories, this paper proposed a network traffic anomaly detection model based on generative adversarial networks and self-encoders. Firstly, a conditional generative adversarial network based on Wasserstein distance was used to resample the minority categories in the original network traffic data. Secondly, the resampled data were reconstructed using a stacked denoising self-encoder to obtain potential information of the data. Finally, the encoder network combined with a Softmax network was used to identify anomalous network traffic data. Experiments are conducted on the NSL-KDD intrusion detection dataset, and the experimental results show that proposed anomaly detection model can effectively improve the recognition rate of minority categories.

Key words: deep learning, anomaly detection, generative adversarial networks, denoising autoencoder

CLC Number: