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Causally estimating the effect of YouTube's recommender system using counterfactual bots (2308.10398v2)

Published 21 Aug 2023 in cs.SI

Abstract: In recent years, critics of online platforms have raised concerns about the ability of recommendation algorithms to amplify problematic content, with potentially radicalizing consequences. However, attempts to evaluate the effect of recommenders have suffered from a lack of appropriate counterfactuals -- what a user would have viewed in the absence of algorithmic recommendations -- and hence cannot disentangle the effects of the algorithm from a user's intentions. Here we propose a method that we call counterfactual bots'' to causally estimate the role of algorithmic recommendations on the consumption of highly partisan content. By comparing bots that replicate real users' consumption patterns withcounterfactual'' bots that follow rule-based trajectories, we show that, on average, relying exclusively on the recommender results in less partisan consumption, where the effect is most pronounced for heavy partisan consumers. Following a similar method, we also show that if partisan consumers switch to moderate content, YouTube's sidebar recommender ``forgets'' their partisan preference within roughly 30 videos regardless of their prior history, while homepage recommendations shift more gradually towards moderate content. Overall, our findings indicate that, at least since the algorithm changes that YouTube implemented in 2019, individual consumption patterns mostly reflect individual preferences, where algorithmic recommendations play, if anything, a moderating role.

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References (11)
  1. A Schomer, “US YouTube advertising 2020,”  (2020).
  2. M Iqbal, “Twitter revenue and usage statistics 2020,”  (2021).
  3. Z. Tufekci, “Youtube, the great radicalizer,”  (2018).
  4. K. Roose, “The making of a YouTube radical,”  (2019).
  5. A. Narayanan, “Understanding social media recommendation algorithms,”  (2023).
  6. K. Munger and J. Phillips, The International Journal of Press/Politics 27, 186 (2022).
  7. T. Yang and S. González-Bailón, Available at SSRN 3954565  (2021).
  8. E. Pariser, The filter bubble: How the new personalized web is changing what we read and how we think (2011).
  9. J. Haidt and J. Twenge, Unpublished manuscript, New York University.  (2023).
  10. I. Waller and A. Anderson, Nature 600, 264 (2021), number: 7888 Publisher: Nature Publishing Group.
  11. C. Goodrow, “On YouTube’s recommendation system,”  (2021).
Citations (12)

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