Department of Computer Science, Engineering Faculty, Electronics and Telecommunications University of Deusto, 48014 Bilbao, Spain.
Unit of Public Policy, Simon Bolivar University, Caracas 89000, Venezuela.
Int J Environ Res Public Health. 2022 May 7;19(9):5705. doi: 10.3390/ijerph19095705.
The aim of this study is to analyze the effects of lockdown using natural language processing techniques, particularly sentiment analysis methods applied at large scale. Further, our work searches to analyze the impact of COVID-19 on the university community, jointly on staff and students, and with a multi-country perspective. The main findings of this work show that the most often related words were "family", "anxiety", "house", and "life". Besides this finding, we also have shown that staff have a slightly less negative perception of the consequences of COVID-19 in their daily life. We have used artificial intelligence models such as swivel embedding and a multilayer perceptron as classification algorithms. The performance that was reached in terms of accuracy metrics was 88.8% and 88.5% for students and staff, respectively. The main conclusion of our study is that higher education institutions and policymakers around the world may benefit from these findings while formulating policy recommendations and strategies to support students during this and any future pandemics.
本研究旨在利用自然语言处理技术分析封锁的影响,特别是应用于大规模的情感分析方法。此外,我们的工作旨在分析 COVID-19 对大学社区的影响,包括教职员工和学生,并从多国角度进行分析。这项工作的主要发现表明,最常相关的词是“家庭”、“焦虑”、“房子”和“生活”。除了这一发现,我们还表明,教职员工对 COVID-19 在日常生活中造成的后果的负面看法略少。我们使用了旋转嵌入和多层感知器等人工智能模型作为分类算法。在准确性指标方面达到的性能分别为 88.8%和 88.5%,适用于学生和教职员工。我们研究的主要结论是,世界各地的高等教育机构和政策制定者在制定政策建议和战略以在这一时期及未来任何大流行期间支持学生时,可以从这些发现中受益。