Login / Signup

Analysis of the Effects of Lockdown on Staff and Students at Universities in Spain and Colombia Using Natural Language Processing Techniques.

Mario Fernando Jojoa AcostaBegonya Garcia ZapirainMarino J GonzalezBernardo Perez VillaElena UrizarSara PonceMaria Fernanda Tobar-Blandon
Published in: International journal of environmental research and public health (2022)
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.
Keyphrases
  • artificial intelligence
  • machine learning
  • deep learning
  • coronavirus disease
  • healthcare
  • high school
  • sars cov
  • mental health
  • public health
  • autism spectrum disorder
  • long term care
  • drug induced