Investigating Cybersecurity News Articles by Applying Topic Modeling Method

Piyush Ghasiya, K. Okamura
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Abstract

Machine Learning (ML) and specifically Natural Language Processing (NLP) are increasingly used as tools in the cybersecurity world. These NLP tools bring new capabilities that support both defenders and attackers in their activities, whether it is risk scenarios such as events and threats or security operations. Ours is a unique case study as we are investigating cybersecurity news on a national and global level. This large study covered six countries and 18 major newspapers and analyzed thousands of cybersecurity articles using the Nonnegative Matrix Factorization (NMF) topic modeling method. News making and policymaking complement each other in forming national identities. This research aims to provide the foundation for the field of Cybersecurity in this direction. Our results showed the US dominance and its significance for other countries. This research also highlighted that much of the US media’s cybersecurity reporting focuses on domestic issues, unlike other nations.
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应用主题建模方法研究网络安全新闻文章
机器学习(ML),特别是自然语言处理(NLP)越来越多地被用作网络安全领域的工具。这些NLP工具带来了支持防御者和攻击者活动的新功能,无论是事件和威胁之类的风险场景还是安全操作。我们是一个独特的案例研究,因为我们正在调查国家和全球层面的网络安全新闻。这项大型研究涵盖了6个国家和18家主要报纸,并使用非负矩阵分解(NMF)主题建模方法分析了数千篇网络安全文章。新闻制定和政策制定在形成国家认同方面是相辅相成的。本研究旨在为网络安全领域这一方向提供基础。我们的研究结果显示了美国的主导地位及其对其他国家的重要性。这项研究还强调,与其他国家不同,美国媒体的网络安全报道大多集中在国内问题上。
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