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A scalable network intrusion detection system towards detecting, discovering, and learning unknown attacks

机译:一种可扩展的网络入侵检测系统,用于检测,发现和学习未知攻击

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摘要

Network intrusion detection systems (IDSs) based on deep learning have reached fairly accurate attack detection rates. But these deep learning approaches usually have been performed in a closed-set protocol that only known classes appear in training are considered during classification, the existing IDSs will fail to detect the unknown attacks and misclassify them as the training known classes, hence are not scalable. Furthermore, these IDSs are not efficient for updating the deep detection model once new attacks are discovered. To address those problems, we propose a scalable IDS towards detecting, discovering, and learning unknown attacks, it has three components. Firstly, we propose the open-set classification network (OCN) to detect unknown attacks, OCN based on the convolutional neural network adopts the nearest class mean (NCM) classifier, two new loss are designed to jointly optimize it, including Fisher loss and maximum mean discrepancy (MMD) loss. Subsequently, the semantic embedding clustering method is proposed to discover the hidden unknown attacks from all unknown instances detected by OCN. Then we propose the incremental nearest cluster centroid (INCC) method for learning the discovered unknown attacks through updating the NCM classifier. Extensive experiments on KDDCUP'99 dataset and CICIDS2017 dataset indicate that our OCN outperforms the state-of-the-art comparison methods in detecting multiple types of unknown attacks. Our experiments also verify the feasibility of the semantic embedding clustering method and INCC in discovering and learning unknown attacks.
机译:基于深度学习的网络入侵检测系统(IDS)已达到相当准确的攻击检测率。但这些深度学习方法通​​常在分类期间仅考虑训练中出现的闭合协议中的闭合协议,因此现有的IDS将无法检测到未知的攻击并将其分类为培训已知类,因此不可扩展。此外,一旦发现新攻击,这些IDS不有效地更新深度检测模型。为解决这些问题,我们提出了一种可扩展的ID,用于检测,发现和学习未知攻击,它有三个组件。首先,我们提出了开放式分类网络(OCN)来检测未知攻击,基于卷积神经网络的OCN采用最近的阶级平均值(NCM)分类器,设计了两种新损耗,旨在共同优化它,包括Fisher丢失和最大值均值差异(MMD)损失。随后,提出了语义嵌入聚类方法,以发现来自OCN检测到的所有未知实例的隐藏未知攻击。然后,我们提出了通过更新NCM分类器来学习发现的未知攻击的增量最近的群集质心(INCC)方法。在KDDCUP'99数据集和CicIDS2017数据集上进行了广泛的实验,表明我们的OCN优于检测多种类型未知攻击时的最先进的比较方法。我们的实验还验证了语义嵌入聚类方法和INCC在发现和学习未知攻击时的可行性。

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