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A Study on Keyword Analytics as a Precursor to Machine Learning to Evaluate Radicalisation on Social Media

机译:关键词分析作为机器学习的前兆,以评估社交媒体激进化的前兆

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Social Media as a platform has evolved from its origins as a digital networking and social communications platform, to be an integrated digital limbic system for system; not only providing direct access to the user, but to gauge and shape societal trends globally. The platforms integrating into a user's digital life and footpath therefore generates large quantities of data about users, and their interactions on and between platforms. The continual advancement and integration of technology and its availability and its availability to wider reaches of society are synergic to the growth, use and popularity of social media platforms; leading to social media becoming an integral flagstone of social communication today. This paper discusses a study conducted on a keyword analysis of data mined from open source social media, in this instance, Twitter, and comparing the results with that of an analysis of data captured from 2 publications from a known extremist organisation. Comparatively, the results of the analyses show that it is difficult to attribute behavioural trends through specific keyword usage. The results from the keyword analysis of the Twitter datasets show that the language and themes used are relative to current “trending” events, whereas the recurring keywords found in the extremist publications are that of religious ideology, not specifically relating to a date or event. The study also shows that context plays an important role in the identification of behavioural trends and radicalisation, and as such, further research utilising a keywords-in-context approach of analysis would glean a richer result set to lay a potential foundation for a machine learning approach to big social media dataset analysis.
机译:社会化媒体作为一个平台,从它的起源作为数字网络和社交沟通平台,成为系统集成的数字边缘系统进化;不仅向用户提供直接访问,但以评估和全球形状的社会趋势。该平台集成到用户的数字生活和人行道因此产生大量有关用户的数据,以及它们对和平台之间的交互。技术的不断进步和一体化,它的可用性及其可供社会的更广泛的河段是协同的增长,使用和社交媒体平台的普及;领先的社交媒体逐渐发展成为当今社会交往中不可或缺的石板。本文讨论从开源社交媒体挖掘出的数据进行关键字分析,进行了一项研究,在这种情况下,微博和比较,从已知极端组织从2种出版物获得的数据进行分析的结果。相比较而言,分析的结果表明,这是很难通过特定关键字的使用归因行为趋势。来自Twitter的数据集的关键字分析的结果表明,使用的语言和主题是相对于当前的“趋势”的活动,而在极端的出版物中发现的重复关键字是宗教思想的,没有具体涉及的日期或事件。这项研究还表明这方面起到的行为趋势和激进的鉴定的重要作用,并为利用关键词的上下文分析方法等,进一步开展调查,搜集更丰富的结果集奠定机器学习一个潜在基础接近到大的社交媒体数据集分析。

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