Xenophobic Bullying and COVID-19: An Exploration Using Big Data and Qualitative Analysis

Int J Environ Res Public Health. 2022 Apr 15;19(8):4824. doi: 10.3390/ijerph19084824.

Abstract

Extant literature suggests that xenophobic bullying is intensified by isolated national or global events; however, the analysis of such occurrences is methodologically limited to the use of self-reported data. Examining disclosures of racist bullying episodes enables us to contextualize various perspectives that are shared online and generate insights on how COVID-19 has exacerbated the issue. Moreover, understanding the rationale and characteristics present in xenophobic bullying may have important implications for our social wellbeing, mental health, and inclusiveness as a global community both in the short and long term. This study employs a mixed-method approach using Big Data techniques as well as qualitative analysis of xenophobic bullying disclosures on Twitter following the spread of COVID-19. The data suggests that about half of the sample represented xenophobic bullying. The qualitative analysis also found that 64% of xenophobic bullying-related tweets referred to occasions that perpetuated racist stereotypes. Relatedly, the rationale for almost 75% of xenophobic bullying incidents was due to being Chinese or Asian. The findings of this study, coupled with anti-hate reports from around the world, are used to suggest multipronged policy interventions and considerations of how social media sites such as Twitter can be used to curb the spread of misinformation and xenophobic bullying.

Keywords: COVID-19; Twitter; machine learning; misinformation; qualitative analysis; social wellbeing; xenophobic bullying.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Big Data
  • Bullying*
  • COVID-19* / epidemiology
  • Communication
  • Humans
  • Social Media*