Intrusion Traffic Detection and Classification Based on Unsupervised Learning

被引:4
作者
Zhong, Zhaogen [1 ]
Xie, Cunxiang [2 ]
Tang, Xibo [2 ]
机构
[1] Naval Aviat Univ, Sch Aviat Basis, Yantai 264001, Peoples R China
[2] Naval Aviat Univ, Dept Informat Fus, Yantai 264001, Peoples R China
来源
IEEE ACCESS | 2024年 / 12卷
基金
中国国家自然科学基金;
关键词
Intrusion traffic detection; generative adversarial nets; oversampling; unbalanced datasets;
D O I
10.1109/ACCESS.2024.3400213
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
To solve the problem that the existing intrusion traffic detection models generally adopt machine learning algorithm and supervised deep learning algorithm, and the classification accuracy of model small samples is low, A unsupervised learning intrusion traffic classification model based on Wasserstein divergence objective for generative adversarial nets (WGAN-div) and information maximizing generative adversarial nets (Info GAN) is presented. The algorithm uses generative adversarial network to optimize the sampling of unbalanced data sets and effectively improves the feature extraction capability of small samples of the model. Firstly, the unbalanced data training set is oversampled by WGAN-div to improve the data distribution. Then, the non-data part is processed by independent thermal coding and integrated with the data part to reduce the complexity of pretreatment. Finally, the Info GAN model is used for data training. Performance evaluation and algorithm performance comparison were carried out in NSL-KDD, CICIDS2017 and UNSW-NB15 data sets. The experimental results show that the accuracy of multi-classification task is 91.1%, 97.1%, 79.9% respectively, and the accuracy of binary classification task is 90.9%, 96.9%, 86.1% respectively. Compared with the classical deep learning algorithm, the Info GAN model has higher accuracy and lower false positive rate, and has higher reliability and engineering application value.
引用
收藏
页码:67860 / 67879
页数:20
相关论文
共 44 条
  • [1] Abrar Iram, 2020, 2020 International Conference on Smart Electronics and Communication (ICOSEC), P919, DOI 10.1109/ICOSEC49089.2020.9215232
  • [2] Network intrusion detection system: A systematic study of machine learning and deep learning approaches
    Ahmad, Zeeshan
    Shahid Khan, Adnan
    Wai Shiang, Cheah
    Abdullah, Johari
    Ahmad, Farhan
    [J]. TRANSACTIONS ON EMERGING TELECOMMUNICATIONS TECHNOLOGIES, 2021, 32 (01)
  • [3] An Analysis of the KDD99 and UNSW-NB15 Datasets for the Intrusion Detection System
    Al-Daweri, Muataz Salam
    Ariffin, Khairul Akram Zainol
    Abdullah, Salwani
    Senan, Mohamad Firham Efendy Md
    [J]. SYMMETRY-BASEL, 2020, 12 (10): : 1 - 32
  • [4] Deep Learning Approach Combining Sparse Autoencoder With SVM for Network Intrusion Detection
    Al-Qatf, Majjed
    Yu Lasheng
    Al-Habib, Mohammed
    Al-Sabahi, Kamal
    [J]. IEEE ACCESS, 2018, 6 : 52843 - 52856
  • [5] Aleesa AM, 2021, J ENG SCI TECHNOL, V16, P711
  • [6] Anderson J.P., 1980, Technical Report
  • [7] Arjovsky M, 2017, PR MACH LEARN RES, V70
  • [8] Resampling imbalanced data for network intrusion detection datasets
    Bagui, Sikha
    Li, Kunqi
    [J]. JOURNAL OF BIG DATA, 2021, 8 (01)
  • [9] SMOTE: Synthetic minority over-sampling technique
    Chawla, Nitesh V.
    Bowyer, Kevin W.
    Hall, Lawrence O.
    Kegelmeyer, W. Philip
    [J]. 2002, American Association for Artificial Intelligence (16)
  • [10] Chen H, 2019, arXiv