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Network-traffic anomaly detection with incremental majority learning

机译:具有增量多数学习的网络流量异常检测

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Detecting anomaly behavior in large network traffic data has presented a great challenge in designing effective intrusion detection systems. We propose an adaptive model to learn majority patterns under a dynamic changing environment. We first propose unsupervised learning on data abstraction to extract essential features of samples. We then adopt incremental majority learning with iterative evolutions on fitting envelopes to characterize the majority of samples within moving windows. A network traffic sample is considered an anomaly if its abstract feature falls on the outside of the fitting envelope. We justify the effectiveness of the presented approach against 150000+ traffic samples from the NSL-KDD dataset in training and testing, demonstrating positive promise in detecting network attacks by identifying samples that have abnormal features.
机译:在设计有效的入侵检测系统时,检测大型网络流量数据中的异常行为提出了巨大的挑战。我们提出了一种自适应模型来学习动态变化环境下的多数模式。我们首先提出关于数据抽象的无监督学习,以提取样本的基本特征。然后,我们在拟合包络上采用渐进式多数学习方法,并对其进行迭代演化,以表征移动窗口中的大多数样本。如果网络流量样本的抽象特征落在拟合包络线的外部,则将其视为异常。我们证明了针对训练和测试中来自NSL-KDD数据集的15万多个流量样本所提出的方法的有效性,证明了通过识别具有异常特征的样本来检测网络攻击的积极前景。

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