This article investigates under which video watch conditions YouTube's recommender system tends to develop a preference for conspiracy-classified videos. Whereas existing research on so-called filter bubbles and rabbit holes tends to rely on non-personalized recommendations and on standard watch patterns, this study puts personalization and diversified user strategies at the center of its design. 20 authenticated bots have been instructed to watch YouTube content based on four distinct watch strategies. In a baseline strategy, bots watched non-conspiracy videos only. Treatment strategies involved watching conspiracy-classified content, selected based on either non-personalized, partly-personalized, or fully-personalized input. Bots watched ...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
This work-in-progress examines the results of algorithm audits of YouTube search and recommendation ...
Recent trends and developments in the fields of Big Data, Machine Learning, and Artificial Intellige...
This article investigates under which video watch conditions YouTube's recommender system tends to d...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
YouTube has revolutionized the way people discover and consume videos, becoming one of the primary n...
Numerous discussions have advocated the presence of a so called rabbit-hole (RH) phenomenon on socia...
Algorithmic personalization is difficult to approach because it entails studying many different user...
YouTube has been implicated in the transformation of users into extremists and conspiracy theorists....
In this paper, we examine the effects of the YouTube recommendation algorithm on the distribution of...
To appear at the 16th International Conference on Web and Social Media (ICWSM 2022). This project ...
Abstract: The role played by YouTube's recommendation algorithm in unwittingly promoting misinformat...
In Social Network Analysis and Mining (Springer)International audienceNumerous discussions have advo...
YouTube has revolutionized the way people discover and consume video content. Although YouTube faci...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
This work-in-progress examines the results of algorithm audits of YouTube search and recommendation ...
Recent trends and developments in the fields of Big Data, Machine Learning, and Artificial Intellige...
This article investigates under which video watch conditions YouTube's recommender system tends to d...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
YouTube has revolutionized the way people discover and consume videos, becoming one of the primary n...
Numerous discussions have advocated the presence of a so called rabbit-hole (RH) phenomenon on socia...
Algorithmic personalization is difficult to approach because it entails studying many different user...
YouTube has been implicated in the transformation of users into extremists and conspiracy theorists....
In this paper, we examine the effects of the YouTube recommendation algorithm on the distribution of...
To appear at the 16th International Conference on Web and Social Media (ICWSM 2022). This project ...
Abstract: The role played by YouTube's recommendation algorithm in unwittingly promoting misinformat...
In Social Network Analysis and Mining (Springer)International audienceNumerous discussions have advo...
YouTube has revolutionized the way people discover and consume video content. Although YouTube faci...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
This work-in-progress examines the results of algorithm audits of YouTube search and recommendation ...
Recent trends and developments in the fields of Big Data, Machine Learning, and Artificial Intellige...