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Intrusion detection systems vulnerability on adversarial examples

机译:对抗示例中的入侵检测系统漏洞

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Intrusion detection systems define an important and dynamic research area for cybersecurity. The role of Intrusion Detection System within security architecture is to improve a security level by identification of all malicious and also suspicious events that could be observed in computer or network system. One of the more specific research areas related to intrusion detection is anomaly detection. Anomaly-based intrusion detection in networks refers to the problem of finding untypical events in the observed network traffic that do not conform to the expected normal patterns. It is assumed that everything that is untypical/anomalous could be dangerous and related to some security events. To detect anomalies many security systems implements a classification or clustering algorithms. However, recent research proved that machine learning models might misclassify adversarial events, e.g. observations which were created by applying intentionally non-random perturbations to the dataset. Such weakness could increase of false negative rate which implies undetected attacks. This fact can lead to one of the most dangerous vulnerabilities of intrusion detection systems. The goal of the research performed was verification of the anomaly detection systems ability to resist this type of attack. This paper presents the preliminary results of tests taken to investigate existence of attack vector, which can use adversarial examples to conceal a real attack from being detected by intrusion detection systems.
机译:入侵检测系统为网络安全定义了重要且动态的研究领域。入侵检测系统在安全体系结构中的作用是通过识别计算机或网络系统中可能观察到的所有恶意和可疑事件来提高安全级别。与入侵检测有关的更具体的研究领域之一是异常检测。网络中基于异常的入侵检测是指在观察到的网络流量中发现不符合预期正常模式的非典型事件的问题。假定所有不典型/异常的事情都可能是危险的,并且与某些安全事件有关。为了检测异常,许多安全系统实现了分类或聚类算法。但是,最近的研究证明,机器学习模型可能会错误地将对抗性事件分类,例如通过将有意的非随机扰动应用于数据集而创建的观测值。这种弱点可能会增加假阴性率,这意味着无法检测到攻击。这个事实可能导致入侵检测系统成为最危险的漏洞之一。进行研究的目的是验证异常检测系统抵抗这种攻击的能力。本文介绍了调查攻击矢量存在性的初步测试结果,可以使用对抗性示例来掩盖入侵检测系统无法检测到的真实攻击。

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