Department of Chemistry, Biochemistry and Physics, Université du Québec à Trois-Rivières, Trois-Rivières, Canada.
School of Criminology, University of Montreal, Montreal, Canada.
Forensic Sci Int. 2020 Aug;313:110364. doi: 10.1016/j.forsciint.2020.110364. Epub 2020 Jun 13.
Forensic science is constantly evolving and transforming, reflecting the numerous technological innovations of recent decades. There are, however, continuing issues with the use of digital data, such as the difficulty of handling large-scale collections of text data. As one way of dealing with this problem, we used machine-learning techniques, particularly natural language processing and Latent Dirichlet Allocation (LDA) topic modeling, to create an unsupervised text reduction method that was then used to study social reactions in the aftermath of the 2017 Manchester Arena bombing. Our database was a set of millions of messages posted on Twitter in the first 24 h after the attack. The findings show that our method improves on the tools presently used by law enforcement and other agencies to monitor social media, particularly following an event that is likely to create widespread social reaction. For example, it makes it possible to track different types of social reactions over time and to identify subevents that have a significant impact on public perceptions.
法医学在不断发展和变革,反映了近几十年来众多的技术创新。然而,在使用数字数据方面仍存在一些持续存在的问题,例如处理大规模文本数据集合的困难。作为解决这个问题的一种方法,我们使用了机器学习技术,特别是自然语言处理和潜在狄利克雷分配(LDA)主题建模,来创建一种无监督的文本简化方法,然后用于研究 2017 年曼彻斯特竞技场爆炸事件后的社会反应。我们的数据库是一组在袭击发生后的头 24 小时内在 Twitter 上发布的数百万条消息。研究结果表明,我们的方法改进了执法部门和其他机构目前用于监测社交媒体的工具,特别是在可能引发广泛社会反应的事件之后。例如,它使得跟踪不同类型的社会反应随时间的变化以及识别对公众看法有重大影响的子事件成为可能。