Auditing YouTube’s Recommendation Algorithm for Misinformation Filter Bubbles

Author:

Srba Ivan1ORCID,Moro Robert1ORCID,Tomlein Matus1ORCID,Pecher Branislav2ORCID,Simko Jakub1ORCID,Stefancova Elena1ORCID,Kompan Michal1ORCID,Hrckova Andrea1ORCID,Podrouzek Juraj1ORCID,Gavornik Adrian1ORCID,Bielikova Maria1ORCID

Affiliation:

1. Kempelen Institute of Intelligent Technologies, Bratislava, Slovakia

2. Faculty of Information Technology, Brno University of Technology, Brno, Czechia

Abstract

In this article, we present results of an auditing study performed over YouTube aimed at investigating how fast a user can get into a misinformation filter bubble, but also what it takes to “burst the bubble,” i.e., revert the bubble enclosure. We employ a sock puppet audit methodology, in which pre-programmed agents (acting as YouTube users) delve into misinformation filter bubbles by watching misinformation-promoting content. Then they try to burst the bubbles and reach more balanced recommendations by watching misinformation-debunking content. We record search results, home page results, and recommendations for the watched videos. Overall, we recorded 17,405 unique videos, out of which we manually annotated 2,914 for the presence of misinformation. The labeled data was used to train a machine learning model classifying videos into three classes (promoting, debunking, neutral) with the accuracy of 0.82. We use the trained model to classify the remaining videos that would not be feasible to annotate manually. Using both the manually and automatically annotated data, we observe the misinformation bubble dynamics for a range of audited topics. Our key finding is that even though filter bubbles do not appear in some situations, when they do, it is possible to burst them by watching misinformation-debunking content (albeit it manifests differently from topic to topic). We also observe a sudden decrease of misinformation filter bubble effect when misinformation-debunking videos are watched after misinformation-promoting videos, suggesting a strong contextuality of recommendations. Finally, when comparing our results with a previous similar study, we do not observe significant improvements in the overall quantity of recommended misinformation content.

Funder

Ministry of Education, Science, Research and Sport of the Slovak Republic

Central European Digital Media Observatory

European Union

EU Horizon 2020

Horizon Europe, GA

Publisher

Association for Computing Machinery (ACM)

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