辅助分类器生成对抗网络辅助入侵检测系统

Kejun Zhang, Haocong Qin, Yuhan Jin, Hangyu Wang, Xinying Yu
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引用次数: 0

摘要

目前机器学习在入侵检测领域的应用比较广泛,现有的入侵检测算法也比较成熟,但是如何解决样本数据不平衡的问题还需要进一步的研究。针对入侵检测过程中样本数据不平衡导致的检测精度和效率问题,提出了一种基于辅助分类对抗网络(ACGAN)和图神经网络(GNN)融合的入侵检测方法。首先在数据预处理中利用ACGAN扩展少数派样本对数据集进行优化,然后在分类过程中利用改进的异构图神经网络算法对样本流关系进行建模,从而提高少数派攻击样本和未知攻击样本的检测鲁棒性。利用CICIDS2017数据集对模型进行评估。与同类算法相比,ACGAN-GNN不仅在正确率、精密度、查全率和f1分数方面具有更好的性能,而且对少数或未知攻击类型具有更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Auxiliary Classifier Generative Adversarial Network Assisted Intrusion Detection System
Machine learning is applied widely in the field of intrusion detection at present, the existing intrusion detection algorithm is relatively mature, but how to solve the problem of unbalanced sample data still need further research. Aiming at the problem of detection accuracy and efficiency caused by sample data imbalance in the process of intrusion detection, this paper proposes an intrusion detection method based on the fusion of Auxiliary Classification Adversarial Network (ACGAN) and Graph Neural Network (GNN) (ACGAN-GNN). Firstly, ACGAN is used to expand minority samples in data preprocessing to optimize the dataset, and then the improved heterogeneous graph neural network algorithm is used to model the sample flow relationship in the classification process, so as to improve the detection robustness of minority attack samples and unknown attack samples. The model is evaluated by CICIDS2017 dataset. Compared with similar algorithms, ACGAN-GNN not only has better performance in terms of accuracy, precision, recall and F1-score, but also has higher accuracy against minority or unknown attack types.
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