Scientific Reports (Nov 2023)

The online language of work-personal conflict

  • Gloria Liou,
  • Juhi Mittal,
  • Neil K. R. Sehgal,
  • Louis Tay,
  • Lyle Ungar,
  • Sharath Chandra Guntuku

DOI
https://doi.org/10.1038/s41598-023-48193-3
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 9

Abstract

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Abstract With the blurring of boundaries in this digital age, there is increasing concern around work-personal conflict. Assessing and tracking work-personal conflict is critical as it not only affects individual workers but is also a vital measure among broader well-being and economic indices. This inductive study examines the extent to which work-personal conflict corresponds to individuals’ language use on social media. We apply an open-vocabulary analysis to the posts of 2810 Facebook users who also completed a survey for an established work-personal conflict scale. It was found that the language-based model can predict personal-to-work conflict (r = 0.23) and work-to-personal conflict (r = 0.15) and provide important insights into such conflicts. Specifically, we found that high personal-to-work conflict was associated with netspeak and swearing, while low personal-to-work conflict was associated with language about work and positivity. We found that high work-to-personal conflict was associated with negative emotion and negative tone, while low work-to-personal conflict was associated with positive emotion and language about birthdays.