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Surfing Personalization for Quantifying the Rabbit Hole Phenomenon on YouTube

Abstract : Numerous discussions have advocated the presence of a so called rabbit-hole (RH) phenomenon on social media, interested in advanced personalization to their users. This phenomenon is loosely understood as a collapse of mainstream recommendations, in favor of ultra personalized ones that lock users into narrow and specialized feeds. Yet quantitative studies are often ignoring personalization, are of limited scale, and rely on manual tagging to track this collapse. This precludes a precise understanding of the phenomenon based on reproducible observations, and thus the continuous audits of platforms. In this paper, we first tackle the scale issue by proposing a user-sided bot-centric approach that enables large scale data collection, through autoplay walks on recommendations. We then propose a simple theory that explains the appearance of these RHs. While this theory is a simplifying viewpoint on a complex and planet-wide phenomenon, it carries multiple advantages: it can be analytically modelled, and provides a general yet rigorous definition of RHs. We define them as an interplay between i) user interaction with personalization and ii) the strength of attraction of certain video categories, which cause users to quickly step apart of mainstream recommendations made to fresh user profiles. We illustrate these concepts by highlighting some RHs found after collecting more than 16 million personalized recommendations on YouTube. A final validation step compares our automatically-identified RHs against manually-identified RHs from a previous research work. Together, those results pave the way for large scale and automated audits of the RH effect in recommendation systems.
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Preprints, Working Papers, ...
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https://hal.archives-ouvertes.fr/hal-03620039
Contributor : Erwan Le Merrer Connect in order to contact the contributor
Submitted on : Friday, March 25, 2022 - 3:04:27 PM
Last modification on : Wednesday, June 1, 2022 - 3:59:29 AM
Long-term archiving on: : Sunday, June 26, 2022 - 6:59:18 PM

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  • HAL Id : hal-03620039, version 1

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Erwan Le Merrer, Gilles Trédan. Surfing Personalization for Quantifying the Rabbit Hole Phenomenon on YouTube. 2022. ⟨hal-03620039⟩

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