A study of IoT malware activities using association rule learning for darknet sensor data

International Journal of Information Security(2019)

引用 22|浏览14
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摘要
Along with the proliferation of Internet of Things (IoT) devices, cyberattacks towards these devices are on the rise. In this paper, we present a study on applying Association Rule Learning to discover the regularities of these attacks from the big stream data collected on a large-scale darknet. By exploring the regularities in IoT-related indicators such as destination ports , type of service , and TCP window sizes , we succeeded in discovering the activities of attacking hosts associated with well-known classes of malware programs. As a case study, we report an interesting observation of the attack campaigns before and after the first source code release of the well-known IoT malware Mirai . The experiments show that the proposed scheme is effective and efficient in early detection and tracking of activities of new malware on the Internet and hence induces a promising approach to automate and accelerate the identification and mitigation of new cyber threats.
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关键词
Cybersecurity,Machine learning,IoT malware,Association rule learning,Darknet traffic analysis
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