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ADEPT: Detection and Identification of Correlated Attack Stages in IoT Networks

机译:擅长:检测和识别IOT网络中相关攻击阶段的识别

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摘要

The fast-growing Internet-of-Things (IoT) market has opened up a large threat landscape, given the wide deployment of IoT devices in both consumer and commercial spaces. Attacks on IoT devices generally consist of multiple stages and are dispersed spatially and temporally. These characteristics make it challenging to detect and identify the attack stages using solutions that tend to be localized in space and time. In this work, we present Adept, a distributed framework to detect and identify the individual attack stages in a coordinated attack. Adept works in three phases. First, network traffic of IoT devices is processed locally for detecting anomalies with respect to their benign profiles. Any alert corresponding to a potential anomaly is sent to a security manager, where aggregated alerts are mined, using frequent itemset mining (FIM), for detecting patterns correlated across both time and space. Finally, using both alert-level and pattern-level information as features, we employ a machine learning approach to identify individual attack stages in the generated alerts. We carry out extensive experiments, with emulated and realistic network traffic; the results demonstrate the effectiveness of the proposed framework in terms of its ability in attack-stage detection and identification.
机译:鉴于消费者和商业空间中的IOT设备的广泛部署,快速增长的互联网(IOT)市场已开辟了大型威胁景观。 IOT设备的攻击通常由多个阶段组成,并且在空间和时间上分散。这些特性使得使用往往在空间和时间倾向于本地化的解决方案来挑战和识别攻击阶段。在这项工作中,我们展示了Adept,一个分布式框架来检测和识别协调攻击中的个体攻击阶段。擅长三个阶段工作。首先,在本地处理IOT设备的网络流量,用于检测相对于其良性配置文件的异常。对应于潜在异常的任何警报被发送到安全管理器,其中使用频繁的项目集挖掘(FIM)进行聚合警报,用于检测跨空间和空间相关的模式。最后,使用Alear-Level和模式级信息作为特征,我们采用机器学习方法来识别所生成的警报中的单个攻击阶段。我们进行了广泛的实验,具有模拟和现实的网络流量;结果证明了拟议框架在其攻击阶段检测和识别能力方面的有效性。

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