社交媒体上威胁网络的发现和利用的原型和分析

O. Simek, Danelle C. Shah, Andrew Heier
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引用次数: 3

摘要

识别和分析威胁行为者是许多政府组织的高优先级任务。这些威胁行为者可能会积极行动,利用互联网进行宣传,招募新成员,或对其网络施加指挥和控制。或者,威胁行为者可以被动地操作,在使用其互联网存在来收集他们需要的信息时,在线展示操作安全意识,以构成离线物理威胁。本文提出了一种灵活的新原型系统,该系统允许分析人员使用公开可用的信息自动检测、监控和表征威胁行为者及其网络。提出的原型系统填补了情报界对自动手动构建和分析在线威胁网络的能力的需求。利用图形采样方法,我们对极端主义社交媒体账户及其网络进行有针对性的数据收集。我们设计并整合了新的算法,用于角色分类和激进化检测,使用来自极端主义社会科学文献的见解。此外,我们开发和实施分析,以方便监控动态社交网络的时间。该原型还结合了几种新的机器学习算法,用于发现和表征威胁行为者,例如将用户帖子分类为话语类别、用户帖子摘要和性别预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prototype and Analytics for Discovery and Exploitation of Threat Networks on Social Media
Identifying and profiling threat actors are high priority tasks for a number of governmental organizations. These threat actors may operate actively, using the Internet to promote propaganda, recruit new members, or exert command and control over their networks. Alternatively, threat actors may operate passively, demonstrating operational security awareness online while using their Internet presence to gather information they need to pose an offline physical threat. This paper presents a flexible new prototype system that allows analysts to automatically detect, monitor and characterize threat actors and their networks using publicly available information. The proposed prototype system fills a need in the intelligence community for a capability to automate manual construction and analysis of online threat networks. Leveraging graph sampling approaches, we perform targeted data collection of extremist social media accounts and their networks. We design and incorporate new algorithms for role classification and radicalization detection using insights from social science literature of extremism. Additionally, we develop and implement analytics to facilitate monitoring the dynamic social networks over time. The prototype also incorporates several novel machine learning algorithms for threat actor discovery and characterization, such as classification of user posts into discourse categories, user post summaries and gender prediction.
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