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发现黑客社区中的新兴威胁:一个非参数新兴主题检测框架

Discovering Emerging Threats in the Hacker Community: A Nonparametric Emerging Topic Detection Framework

MIS Quarterly · 2022
被引 15
人大 A+FT50UTD24ABS 4*

中文导读

提出一个非参数新兴主题检测框架,从暗网黑客社区内容中自动发现新兴威胁主题,帮助组织提前防御网络攻击。

Abstract

The prevalence and rapid growth of cybercrime are largely attributed to hacker communities on the dark web, where cybercriminals extensively exchange hacking resources, share hacking knowledge, and organize cyberattacks. Such streams of hacker-generated content constitute an invaluable data source for developing threat intelligence that can inform organizations of cybersecurity risks and facilitate proactive cyber defense. Drawing upon the design science paradigm, we propose a novel nonparametric emerging topic detection (NPETD) framework for detecting emerging topics in streams of hacker-generated content. Our framework extends the state-of-the-art nonparametric topic model to inductively model topics without having to specify the number of topics a priori. Moreover, our framework features an efficient algorithm to jointly infer topics and detect topic emergence. We conducted experiments to rigorously evaluate the effectiveness and efficiency of our framework in comparison with the state-of-the-art baseline methods. Our framework outperformed the baseline methods in detecting the listings of emerging threats in darknet marketplaces on recall, F-measure, topic coherence, and processor time. The practical utility of our framework is further demonstrated in a major hacker forum, where we identified several notable emerging topics with important implications for victim companies and law enforcement. The proposed framework contributes to cybersecurity, topic detection and tracking, and design science.

网络安全黑客社区主题检测暗网网络犯罪