网络入侵检测的高效深度CNN-BiLSTM模型

Jay Sinha, M. Manollas
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引用次数: 34

摘要

由于云技术的使用已经成为主流,对网络入侵检测系统的需求已经上升。随着网络流量的不断增长,网络入侵检测是网络安全的重要组成部分,面对各种攻击的频繁出现,高效的网络入侵检测是必不可少的。这些入侵检测系统建立在模式匹配系统或基于AI/ML的异常检测系统之上。模式匹配方法通常有很高的误报率,而基于AI/ML的方法依赖于寻找指标/特征或一组指标/特征之间的相关性来预测攻击的可能性。其中最常见的是KNN, SVM等,它们在有限的特征集上运行,精度较低,并且仍然存在较高的误报率。在本文中,我们提出了一个深度学习模型,结合了卷积神经网络和双向LSTM的独特优势,以结合数据的空间和时间特征的学习。在本文中,我们使用公开可用的数据集NSL-KDD和UNSW-NB15来训练和测试模型。该模型具有较高的检测率和较低的误报率。所提出的模型比许多利用机器学习/深度学习模型的最先进的网络入侵检测系统表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Deep CNN-BiLSTM Model for Network Intrusion Detection
The need for Network Intrusion Detection systems has risen since usage of cloud technologies has become mainstream. With the ever growing network traffic, Network Intrusion Detection is a critical part of network security and a very efficient NIDS is a must, given new variety of attack arises frequently. These Intrusion Detection systems are built on either a pattern matching system or AI/ML based anomaly detection system. Pattern matching methods usually have a high False Positive Rates whereas the AI/ML based method, relies on finding metric/feature or correlation between set of metrics/features to predict the possibility of an attack. The most common of these is KNN, SVM etc., operate on a limited set of features and have less accuracy and still suffer from higher False Positive Rates. In this paper, we propose a deep learning model combining the distinct strengths of a Convolutional Neural Network and a Bi-directional LSTM to incorporate learning of spatial and temporal features of the data. For this paper, we use publicly available datasets NSL-KDD and UNSW-NB15 to train and test the model. The proposed model offers a high detection rate and comparatively lower False Positive Rate. The proposed model performs better than many state-of-the-art Network Intrusion Detection systems leveraging Machine Learning/Deep Learning models.
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