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APT attack detection based on flow network analysis techniques using deep learning

机译:基于流量网络分析技术使用深度学习的APT攻击检测

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摘要

Advanced Persistent Threat (APT) attacks are a form of malicious, intentionally and clearly targeted attack. This attack technique is growing in both the number of recorded attacks and the extent of its dangers to organizations, businesses and governments. Therefore, the task of detecting and warning APT attacks in the real system is very necessary today. One of the most effective approaches to APT attack detection is to apply machine learning or deep learning to analyze network traffic. There have been a number of studies and recommendations to analyze network traffic into network flows and then combine with some classification or clustering methods to look for signs of APT attacks. In particular, recent studies often apply machine learning algorithms to spot the present of APT attacks based on network flow. In this paper, a new method based on deep learning to detect APT attacks using network flow is proposed. Accordingly, in our research, network traffic is analyzed into IP-based network flows, then the IP information is reconstructed from flow, and finally deep learning models are used to extract features for detecting APT attack IPs from other IPs. Additionally, a combined deep learning model using Bidirectional Long Short-Term Memory (BiLSTM) and Graph Convolutional Networks (GCN) is introduced. The new detection model is evaluated and compared with some traditional machine learning models, i.e. Multi-layer perceptron (MLP) and single GCN models, in the experiments. Experimental results show that BiLSTM-GCN model has the best performance in all evaluation scores. This not only shows that deep learning application on flow network analysis to detect APT attacks is a good decision but also suggests a new direction for network intrusion detection techniques based on deep learning.
机译:高级持续威胁(APT)攻击是一种恶意的、故意的、目标明确的攻击。这种攻击技术在记录的攻击数量及其对组织、企业和政府的危害程度上都在增长。因此,在现实系统中检测和警告APT攻击是非常必要的。APT攻击检测最有效的方法之一是应用机器学习或深度学习来分析网络流量。有许多研究和建议将网络流量分析为网络流,然后结合一些分类或聚类方法来寻找APT攻击的迹象。特别是,最近的研究经常使用机器学习算法来发现基于网络流的APT攻击。本文提出了一种基于深度学习的网络流量检测APT攻击的新方法。因此,在我们的研究中,我们将网络流量分析为基于IP的网络流,然后从流中重构IP信息,最后使用深度学习模型从其他IP中提取特征来检测APT攻击IP。此外,还介绍了一种基于双向长短时记忆(BiLSTM)和图卷积网络(GCN)的深度学习模型。在实验中,对新的检测模型进行了评估,并与一些传统的机器学习模型,即多层感知器(MLP)和单GCN模型进行了比较。实验结果表明,BiLSTM GCN模型在所有评价分数中表现最好。这不仅表明将深度学习应用于流网络分析来检测APT攻击是一个很好的决策,而且为基于深度学习的网络入侵检测技术提供了一个新的方向。

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