基于迁移学习的网络流量自动生成框架

Yanjie Li, Tianrui Liu, Dongxiao Jiang, Tao Meng
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引用次数: 6

摘要

目前,针对网络系统的攻击越来越多。入侵检测系统是防范攻击的标准方法。入侵检测本质上是一个根据网络流量特征判断正常或异常行为的分类问题,近年来深度学习已被应用到入侵检测中。然而,由于在工业控制系统、智能电网等一些系统中缺乏训练数据,深度学习算法无法充分发挥其优势。为了解决这一问题,我们提出了一种基于迁移学习的网络流生成框架,用于基于深度学习的入侵检测,该框架使用不变量提取和序列到序列生成,提取现有攻击数据集的攻击不变量,并将知识传递到目标网络系统。我们在实际系统上使用开源数据集进行了相关实验,证明了我们的方法可以有效地生成异常流量,并提高了入侵检测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer-learning-based Network Traffic Automatic Generation Framework
Nowadays, there is an increasing number of attacks against the network system. The intrusion detection system is a standard method to prevent attack. In essence intrusion detection is a classification problem to judge normal or abnormal behaviors according to network traffic characteristics, and deep learning has been applied to intrusion detection recently. However, due to the lack of training data in some systems such as industrial control systems and smart grid, the deep-learning algorithm cannot give full play to its advantages. To solve this problem, we propose a transfer-learning-based network flow generation framework for deep-learning-based intrusion detection, which uses invariant extraction and sequence to sequence generation, to extract the attack invariant of the existing attack data set and transfer the knowledge to the target network system. We use the open-source data set on real systems and carry out relevant experiments, proving that our method can generate effective anomaly traffic as well as improve the accuracy of intrusion detection.
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