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Reinforcing network security by converting massive data flow to continuous connections for IDS

机译:通过将大量数据流转换为IDS的连续连接来增强网络安全性

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Processing massive data flow in intrusion detection systems (IDS) become a serious challenge. It is considered as a major deficiency while handling heterogeneous and non-stationary data stream to uncover anomaly in the online operational mode. This paper proposes a novel online method that constructs connections from the massive data flow for evaluating IDS models. The proposed method overcomes this challenge by using a queuing concept of dynamic window size. It captures network traffic and hosts events constantly and handles them synchronously within time slot windows inside the queue in order to construct connection vectors based on certain features. We have evaluated the method in offline mode using DARPA dump data flow and in online mode using a simulated network at the university campus. In addition, we have evaluated our IDS model using the constructed connections to proof the feasibility and plausibility of the proposed method in IDS area. The performance evaluation confirms that, the proposed method is able to operate in offline as well online modes efficiently. Moreover, constructed connections are very adequate for training and evaluating IDS models.
机译:在入侵检测系统(IDS)中处理大量数据流成为一个严峻的挑战。在在线运行模式下处理异构和非平稳数据流以发现异常时,这被认为是一个主要缺陷。本文提出了一种新颖的在线方法,该方法可从海量数据流中构建连接以评估IDS模型。所提出的方法通过使用动态窗口大小的排队概念克服了这一挑战。它捕获网络流量并持续托管事件,并在队列内的时隙窗口内同步处理这些事件,以便基于某些功能构造连接向量。我们已经使用DARPA转储数据流以脱机模式评估了该方法,并使用大学校园中的模拟网络以在线模式评估了该方法。此外,我们已经使用构建的连接对我们的IDS模型进行了评估,以证明所提出的方法在IDS领域的可行性和合理性。性能评估证实,所提出的方法能够有效地在离线模式和在线模式下运行。此外,构建的连接非常适合训练和评估IDS模型。

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