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Analyzing Flow-based Anomaly Intrusion Detection using Replicator Neural Networks

机译:用复制器神经网络分析基于流量的异常入侵检测

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Defending key network infrastructure, such as Internet backbone links or the communication channels of critical infrastructure, is paramount, yet challenging. The inherently complex nature and quantity of network data impedes detecting attacks in real world settings. In this paper, we utilize features of network flows, characterized by their entropy, together with an extended version of the original Replicator Neural Network (RNN) and deep learning techniques to learn models of normality. This combination allows us to apply anomaly-based intrusion detection on arbitrarily large amounts of data and, consequently, large networks. Our approach is unsupervised and requires no labeled data. It also accurately detects network-wide anomalies without presuming that the training data is completely free of attacks. The evaluation of our intrusion detection method, on top of real network data, indicates that it can accurately detect resource exhaustion attacks and network profiling techniques of varying intensities. The developed method is efficient because a normality model can be learned by training an RNN within a few seconds only.
机译:防御钥匙网络基础架构,如互联网骨干链路或关键基础架构的通信通道,是至关重要的,但具有挑战性。网络数据的固有复杂性质和数量阻碍了真实世界环境中的攻击。在本文中,我们利用网络流的特征,其特征在于它们的熵,以及延长版本的原始Replicator神经网络(RNN)和深度学习技术,以学习正常性模型。这种组合允许我们在任意大量数据上应用基于异常的入侵检测,并且因此,大型网络。我们的方法是无人监督的,不需要标记数据。它还准确地检测到网络宽的异常,而不会推测培训数据完全没有攻击。我们的入侵检测方法的评估在真实网络数据之上表示它可以准确地检测不同强度的资源耗尽和网络分析技术。开发方法是有效的,因为可以通过仅在几秒钟内训练RNN来学习正常模式。

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