Integrated Spatial and Temporal Features Based Network Intrusion Detection System Using SMOTE Sampling

Q1 Mathematics
Shrinivas Khedkar, Madhav Chandane, Rasika Gawande
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引用次数: 0

Abstract

With attackers discovering more inventive ways to take advantage of network weaknesses, the pace of attacks has drastically increased in recent years. As a result, network security has never been more important, and many network intrusion detection systems (NIDS) rely on old, out-of-date attack signatures. This necessitates the deployment of reliable and modern Network Intrusion Detection Systems that are educated on the most recent data and employ deep learning techniques to detect malicious activities. However, it has been found that the most recent datasets readily available contain a large quantity of benign data, enabling conventional deep learning systems to train on the imbalance data. A high false detection rate result from this. To overcome the aforementioned issues, we suggest a Synthetic Minority Over-Sampling Technique (SMOTE) integrated convolution neural network and bi-directional long short-term memory SCNN-BIDLSTM solution for creating intrusion detection systems. By employing the SMOTE, which integrates a convolution neural network to extract spatial features and a bi-directional long short-term memory to extract temporal information; difficulties are reduced by increasing the minority samples in our dataset. In order to train and evaluate our model, we used open benchmark datasets as CIC-IDS2017, NSL-KDD, and UNSW-NB15 and compared the results with other state of the art models.
利用 SMOTE 采样的基于时空特征的网络入侵综合检测系统
随着攻击者发现了更多利用网络弱点的创新方法,近年来攻击的速度急剧加快。因此,网络安全变得前所未有的重要,而许多网络入侵检测系统(NIDS)却依赖于陈旧过时的攻击签名。因此,有必要部署可靠的现代网络入侵检测系统,这些系统可根据最新数据并采用深度学习技术来检测恶意活动。然而,人们发现,现成的最新数据集包含大量良性数据,使传统的深度学习系统能够在不平衡数据上进行训练。这就导致了较高的误检率。为了克服上述问题,我们提出了一种集成卷积神经网络和双向长短期记忆 SCNN-BIDLSTM 的合成少数群体过度采样技术(SMOTE)解决方案,用于创建入侵检测系统。SMOTE 将卷积神经网络和双向长短期记忆集成在一起,前者用于提取空间特征,后者用于提取时间信息。为了训练和评估我们的模型,我们使用了 CIC-IDS2017、NSL-KDD 和 UNSW-NB15 等开放基准数据集,并将结果与其他先进模型进行了比较。
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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
33
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