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Detecting Abnormal Traffic in Large-Scale Networks

机译:检测大型网络中的异常流量

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With the rapid technological advancements, organizations need to rapidly scale up their information technology (IT) infrastructure viz. hardware, software, and services, at a low cost. However, the dynamic growth in the network services and applications creates security vulnerabilities and new risks that can be exploited by various attacks. For example, User to Root (U2R) and Remote to Local (R2L) attack categories can cause a significant damage and paralyze the entire network system. Such attacks are not easy to detect due to the high degree of similarity to normal traffic. While network anomaly detection systems are being widely used to classify and detect malicious traffic, there are many challenges to discover and identify the minority attacks in imbalanced datasets. In this paper, we provide a detailed and systematic analysis of the existing Machine Learning (ML) approaches that can tackle most of these attacks. Furthermore, we propose a Deep Learning (DL) based framework using Long Short Term Memory (LSTM) autoencoder that can accurately detect malicious traffics in network traffic. We perform our experiments in a publicly available dataset of Intrusion Detection Systems (IDSs). We obtain a significant improvement in attack detection, as compared to other benchmarking methods. Hence, our method provides great confidence in securing these networks from malicious traffic.
机译:随着技术进步的快速,组织需要迅速扩大其信息技术(IT)基础设施viz。硬件,软件和服务,以低成本。但是,网络服务和应用程序的动态增长会创建安全漏洞和可以通过各种攻击利用的新风险。例如,用户到root(U2R)和远程到本地(R2L)攻击类别可能会导致显着的损坏并瘫痪整个网络系统。由于与正常流量的高度相似,这种攻击不易检测。虽然网络异常检测系统被广泛用于对恶意流量进行分类和检测,但发现并识别不平衡数据集中的少数群体攻击存在许多挑战。在本文中,我们对现有机器学习(ML)方法提供了详细的和系统分析,这些方法可以解决大部分攻击。此外,我们提出了一种使用长短短期内存(LSTM)AutoEncoder的基于深度学习(DL)框架,可准确地检测网络流量的恶意流量。我们在入侵检测系统(IDS)的公开数据集中执行我们的实验。与其他基准方法相比,我们获得了攻击检测的显着改善。因此,我们的方法对从恶意交通确保这些网络的令人信心。

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