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首页> 外文期刊>ACM Transactions on Management Information Systems >Time-based Gap Analysis of Cybersecurity Trends in Academic and Digital Media
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Time-based Gap Analysis of Cybersecurity Trends in Academic and Digital Media

机译:基于时间的学术和数字媒体网络安全趋势的差距分析

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This study analyzes cybersecurity trends and proposes a conceptual framework to identify cybersecurity topics of social interest and emerging topics that need to be addressed by researchers in the field. The insights drawn from this framework allow for a more proactive approach to identifying cybersecurity patterns and emerging threats that will ultimately improve the collective cybersecurity posture of the modern society. To achieve this, cybersecurity-oriented content in both media and academic corpora, disseminated between 2008 and 2018, were morphologically analyzed via text mining. A total of 3,556 academic papers obtained from the top-10 highly reputable cybersecurity academic conferences, and 4,163 news articles collected from the New York Times were processed. The LDA topic modeling followed optimal perplexity and coherence scores resulted in 12 trendy topics. Next, the time-based gap between these trendy topics was analyzed to measure the correlation between media and trendy academic topics. Both convergences and divergences between the two cybersecurity corpora were identified, suggesting a strong time-based correlation between these resources. This framework demonstrates the effective use of automated techniques to provide insights about cybersecurity topics of social interest and emerging trends and informs the direction of future academic research in this field.
机译:本研究分析了网络安全趋势,并提出了一种概念框架,以识别社会利益的网络安全主题,并在该领域的研究人员讨论的新兴主题。本框架中汲取的见解允许更积极主动地识别网络安全模式和新兴威胁,最终将提高现代社会的集体网络安全姿势。为实现这一目标,在2008年至2018年间传播的媒体和学术集团中的导向网络安全内容在一起通过文本挖掘进行了形态学地分析。共有3,556篇的学术论文,从前10个高度信誉高度信誉的网络安全学术会议,并从纽约时报收集了4,163篇新闻文章。 LDA主题建模遵循最佳困惑和连贯性评分导致12个时尚主题。接下来,分析了这些时尚主题之间的时间差距,以衡量媒体与时尚学术主题之间的相关性。识别出两个网络安全基层之间的收敛和分歧,表明这些资源之间的基于时间的基于时间的相关性。该框架展示了有效利用自动化技术,为社会兴趣和新兴趋势的网络安全主题提供了解,并告知未来的学术研究方向。

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