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首页> 外文期刊>International Journal of Distributed Sensor Networks >HackerRank Identifying key hackers in underground forums
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HackerRank Identifying key hackers in underground forums

机译:Hackerrank识别地下论坛中的关键黑客

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With the rapid development of the Internet, cybersecurity situation is becoming more and more complex. At present, surface web and dark web contain numerous underground forums or markets, which play an important role in cybercrime ecosystem. Therefore, cybersecurity researchers usually focus on hacker-centered research on cybercrime, trying to find key hackers and extract credible cyber threat intelligence from them. The data scale of underground forums is tremendous and key hackers only represent a small fraction of underground forum users. It takes a lot of time as well as expertise to manually analyze key hackers. Therefore, it is necessary to propose a method or tool to automatically analyze underground forums and identify key hackers involved. In this work, we present HackerRank, an automatic method for identifying key hackers. HackerRank combines the advantages of content analysis and social network analysis. First, comprehensive evaluations and topic preferences are extracted separately using content analysis. Then, it uses an improved Topic-specific PageRank to combine the results of content analysis with social network analysis. Finally, HackerRank obtains users’ ranking, with higher-ranked users being considered as key hackers. To demonstrate the validity of proposed method, we applied HackerRank to five different underground forums separately. Compared to using social network analysis and content analysis alone, HackerRank increases the coverage rate of five underground forums by 3.14% and 16.19% on average. In addition, we performed a manual analysis of identified key hackers. The results prove that the method is effective in identifying key hackers in underground forums.
机译:随着互联网的快速发展,网络安全情况变得越来越复杂。目前,表面纤维网和暗纤维网含有许多地下论坛或市场,在网络犯罪生态系统中起着重要作用。因此,网络安全研究人员通常专注于对网络犯罪的居中性的研究,试图找到关键黑客并从中提取可靠的网络威胁情报。地下论坛的数据规模是巨大的,关键的黑客只代表一小部分地下论坛用户。手动分析关键黑客需要花费大量时间和专业知识。因此,有必要提出一种方法或工具来自动分析地下论坛并识别所涉及的关键黑客。在这项工作中,我们展示了Hackerrank,这是一种识别关键黑客的自动方法。 Hackerrank结合了内容分析和社交网络分析的优势。首先,使用内容分析单独提取全面的评估和主题偏好。然后,它使用改进的专用PageRank来结合内容分析结果与社交网络分析。最后,Hackerrank获得了用户的排名,较高的用户被视为关键黑客。为了展示所提出的方法的有效性,我们分别将哈克兰克应用于五个不同的地下论坛。与使用社会网络分析和内容分析单独相比,Hackerrank将五个地下论坛的覆盖率增加3.14%,平均为16.19%。此外,我们对已识别的关键黑客进行了手动分析。结果证明该方法有效地识别地下论坛中的关键黑客。

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