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A Combination of Temporal Sequence Learning and Data Description for Anomaly - based NIDS

机译:基于异常NIDS的时间序列学习与数据描述的结合。

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Through continuous observation and modelling of normal behavior in networks, Anomaly-based Network Intrusion Detection System (A-NIDS) offers a way to find possible threats via deviation from the normal model. The analysis of network traffic based on time series model has the advantage of exploiting the relationship between packages within network traffic and observing trends of behaviors over a period of time. It will generate new sequences with good features that support anomaly detection in network traffic and provide the ability to detect new attacks. Besides, an anomaly detection technique, which focuses on the normal data and aims to build a description of it, will be an effective technique for anomaly detection in imbalanced data. In this paper, we propose a combination model of Long Short Term Memory (LSTM) architecture for processing time series and a data description Support Vector Data Description (SVDD) for anomaly detection in A-NIDS to obtain the advantages of them. This model helps parameters in LSTM and SVDD are jointly trained with joint optimization method. Our experimental results with KDD99 dataset show that the proposed combined model obtains high performance in intrusion detection, especially DoS and Probe attacks with 98.0% and 99.8%, respectively.
机译:通过对网络中正常行为的持续观察和建模,基于异常的网络入侵检测系统(A-NIDS)提供了一种通过偏离正常模型来发现可能威胁的方法。基于时间序列模型的网络流量分析具有以下优势:利用网络流量中的程序包之间的关系,并观察一段时间内的行为趋势。它将生成具有良好功能的新序列,这些序列支持网络流量中的异常检测并提供检测新攻击的能力。此外,以正常数据为重点并试图对其进行描述的异常检测技术将是一种有效的技术,用于不平衡数据的异常检测。在本文中,我们提出了用于处理时间序列的长短期内存(LSTM)体系结构和用于A-NIDS异常检测的数据描述支持向量数据描述(SVDD)的组合模型,以获得它们的优势。该模型有助于通过联合优化方法对LSTM和SVDD中的参数进行联合训练。我们的KDD99数据集实验结果表明,所提出的组合模型在入侵检测方面具有很高的性能,尤其是DoS和Probe攻击分别达到98.0%和99.8%。

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