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Unknown Network Attack Detection Based on Open Set Recognition

机译:基于开放式识别的未知网络攻击检测

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The rapid development of the Internet of Things has led to a series of security and privacy issues. Although existing network intrusion detection technologies can identify abnormal traffic, they are mostly focused on detecting in closed sets. For a real open network environment, when an unknown attack occurs, the existing detection system cannot recognize it correctly, which will severely threaten network security. In order to solve this problem, this paper investigates how the Extreme Value Theory (EVT) is applied to unknown network attack detection system and proposes a network intrusion detection method based on open set recognition. By fitting the known classes’ post recognition activations to a Weibull distribution, we build the Open-CNN model to recalculate each activation at the penultimate level, then the pseudo-probability of unknown classes can be estimated from the activation scores of known classes, realizing the detection purpose of unknown attacks. We perform experiments on multiple datasets with different types and feature distributions. All of them obtain high detection accuracy, which proves the effectiveness and robustness of the proposed method.
机译:事情的快速发展导致了一系列安全和隐私问题。虽然现有的网络入侵检测技术可以识别异常流量,但它们主要集中在封闭式集中检测。对于真正的开放网络环境,当发生未知攻击时,现有的检测系统无法正确识别,这将严重威胁到网络安全性。为了解决这个问题,本文调查了极值理论(EVT)如何应用于未知的网络攻击检测系统,并提出了一种基于开放式识别的网络入侵检测方法。通过拟合已知的类识别激活到威布尔分布,我们构建开放式CNN模型以重新计算倒数第二级的每个激活,然后可以从已知类的激活分数估计未知类的伪概率,实现未知攻击的检测目的。我们在具有不同类型和特征分布的多个数据集上执行实验。所有这些都获得了高检测精度,这证明了该方法的有效性和稳健性。

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