DualNet:定位和检测有效载荷与深度关注网络

Shiyi Yang, Peilun Wu, Hui Guo
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引用次数: 8

摘要

网络入侵检测(NID)是在大规模网络空间中发现可疑用户行为痕迹的重要防御策略,而机器学习(ML)由于其自动化和智能化的能力,近年来逐渐被采用为主流的狩猎方法。然而,传统的基于机器学习的网络入侵检测系统(nids)对未知威胁的识别效果不佳,其高检测率往往伴随着高虚警的代价,从而导致报警疲劳问题。为了解决上述问题,本文提出了一种新的基于神经网络的检测系统DualNet,该系统由一般特征提取阶段和关键特征学习阶段组成。DualNet可以根据其重要性快速重用时空特征,以促进整个学习过程,同时缓解深度学习中出现的一些优化问题。我们在两个基准网络攻击数据集NSL-KDD和UNSW-NB15上对DualNet进行了评估。我们的实验表明,DualNet优于经典的基于ML的nids,并且在准确率、检测率和虚警率方面比现有的DL方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DualNet: Locate Then Detect Effective Payload with Deep Attention Network
Network intrusion detection (NID) is an essential defense strategy that is used to discover the trace of suspicious user behaviour in large-scale cyberspace, and machine learning (ML), due to its capability of automation and intelligence, has been gradually adopted as a mainstream hunting method in recent years. However, traditional ML based network intrusion detection systems (NIDSs) are not effective to recognize unknown threats and their high detection rate often comes with the cost of high false alarms, which leads to the problem of alarm fatigue. To address the above problems, in this paper, we propose a novel neural network based detection system, DualNet, which is constructed with a general feature extraction stage and a crucial feature learning stage. DualNet can rapidly reuse the spatial-temporal features in accordance with their importance to facilitate the entire learning process and simultaneously mitigate several optimization problems occurred in deep learning (DL). We evaluate the DualNet on two benchmark cyber attack datasets, NSL-KDD and UNSW-NB15. Our experiment shows that DualNet outperforms classical ML based NIDSs and is more effective than existing DL methods for NID in terms of accuracy, detection rate and false alarm rate.
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