The rapid development of IoT applications and their use in various fields of everyday life has resulted in an escalated number of different possible cyber-threats, and has consequently raised the need of securing IoT devices. Collecting Cyber-Threat Intelligence (e.g., zero-day vulnerabilities or trending exploits) from various online sources and utilizing it to proactively secure IoT systems or prepare mitigation scenarios has proven to be a promising direction. In this work, we focus on social media monitoring and investigate real-time Cyber-Threat Intelligence detection from the Twitter stream. Initially, we compare and extensively evaluate six different machine-learning based classification alternatives trained with vulnerability descriptions and tested with real-world data from the Twitter stream to identify the best-fitting solution. Subsequently, based on our findings, we propose a novel social media monitoring system tailored to the IoT domain; the system allows users to identify recent/trending vulnerabilities and exploits on IoT devices. Finally, to aid research on the field and support the reproducibility of our results we publicly release all annotated datasets created during this process.
翻译:IOT应用的迅速发展及其在日常生活各个领域的使用,导致各种可能存在的网络威胁的增多,从而增加了确保IOT装置安全的必要性。从各种在线来源收集网络威胁情报(例如零日脆弱性或趋势利用),并利用它积极保障IOT系统安全或制定缓解设想,已证明是一个有希望的方向。在这项工作中,我们侧重于社会媒体监测和调查Twitter流实时网络威胁情报探测。最初,我们比较并广泛评价了六个不同的基于机器学习的分类替代方法,这些方法经过了脆弱性描述,并用Twitter流的真实世界数据进行了测试,以确定最合适的解决办法。随后,我们根据我们的调查结果,建议建立一个针对IOT域的新的社会媒体监测系统;该系统使用户能够查明最新的/传递脆弱性和对IOT装置的利用情况。最后,我们协助实地研究,并支持我们在这个过程中公开公布所有附加注释的数据集。