Stories That Heal: Characterizing and Supporting Narrative for Suicide Bereavement

Authors

  • Dylan Thomas Doyle University of Colorado Boulder
  • Jay K. Ghosh University of Colorado Boulder
  • Reece Suchocki University of Colorado Boulder
  • Brian C. Keegan University of Colorado Boulder
  • Stephen Voida University of Colorado Boulder
  • Jed R. Brubaker University of Colorado Boulder

DOI:

https://doi.org/10.1609/icwsm.v18i1.31319

Abstract

Clinical group bereavement therapy often promotes narrative sharing as a therapeutic intervention to facilitate grief processing. Increasingly, people turn to social media to express stories of loss and seek support surrounding bereavement experiences, specifically, the loss of loved ones from suicide. This paper reports the results of a computational linguistic analysis of narrative expression within an online suicide bereavement support community. We identify distinctive characteristics of narrative posts (compared to non-narrative posts) in linguistic style. We then develop and validate a machine-learning model for tagging narrative posts at scale and demonstrate the utility of applying this machine-learning model to a more general grief support community. Through comparison, we validate our model's narrative tagging accuracy and compare the proportion of narrative posts between the two communities we have analyzed. Narrative posts make up about half of all total posts in these two grief communities, demonstrating the importance of narrative posts to grief support online. Finally, we consider how the narrative tagging tool presented in this study can be applied to platform design to more effectively support people expressing the narrative sharing of grief in online grief support spaces.

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Published

2024-05-28

How to Cite

Doyle, D. T., Ghosh, J. K., Suchocki, R., Keegan, B. C., Voida, S., & Brubaker, J. R. (2024). Stories That Heal: Characterizing and Supporting Narrative for Suicide Bereavement. Proceedings of the International AAAI Conference on Web and Social Media, 18(1), 354-366. https://doi.org/10.1609/icwsm.v18i1.31319