Table of Links
6. Conclusion, References, and Appendix
6 CONCLUSION
In this paper, we presented an study of how subscribers, posts and comments on r/antiwork were impacted by events in the media, how heavy and light user behaviour differed from one another, and a content analysis based on topic modelling to show how the discourse on the subreddit evolved. We have shown that, despite the continuing rise of subscribers, activity on r/antiwork collapsed after the Fox News interview on January 25 2022. We showed that heavy commenters and light posters have a disproportionate influence on subreddit activity, making almost a third of overall comments and posts, respectively. Over time, light posters have become responsible for an increasing proportion of posts, reaching almost 50% of posts by the end of July 2022. Heavy and light commenters, however, appeared unaffected by the surge of users, being responsible for approximately the same number of comments per post throughout the period studied. Commenting trends were not even impacted when 4.4% of heavy commenters made their last comment on r/antiwork between January 26-28 2022 after the broadcast of the Fox News interview. Lastly, the influx of new users did not appear to change the topical content of discussion: all three time periods had the same top-3 topics: Quitting, Reddit and Mental Health. Each time period had distinct topics, but they tended to be related to seasonal events and ongoing developments in the news. Overall, we found no evidence of major shifts in the topical content of discussion over the period studied.
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A APPENDIX
A.1 Topic models
Authors:
(1) Alan Medlar, University of Helsinki, Finland ([email protected]);
(2) Yang Liu, University of Helsinki, Finland ([email protected]);
(3) Dorota Głowacka, University of Helsinki, Finland ([email protected]).
This paper is available on arxiv under CC BY 4.0 DEED license.