Abstract: The role played by YouTube's recommendation algorithm in unwittingly promoting misinformation and conspiracy theories is not entirely understood. Yet, this can have dire real-world consequences, especially when pseudoscientific content is promoted to users at critical times, such as the COVID-19 pandemic. In this paper, we set out to characterize and detect pseudoscientific misinformation on YouTube. We collect 6.6K videos related to COVID-19, the Flat Earth theory, as well as the anti-vaccination and anti-mask movements. Using crowdsourcing, we annotate them as pseudoscience, legitimate science, or irrelevant and train a deep learning classifier to detect pseudoscientific videos with an accuracy of 0.79. We quantify user exposu...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
In this paper, we analyze the content of the most popular videos posted on YouTube in the first phas...
The role played by YouTube's recommendation algorithm in unwittingly promoting misinformation and co...
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...
Dataset for the paper: "It is just a flu: Assessing the Effect of Watch History on YouTube’s Pseudos...
YouTube has revolutionized the way people discover and consume video content. Although YouTube faci...
This article investigates under which video watch conditions YouTube's recommender system tends to d...
This work-in-progress examines the results of algorithm audits of YouTube search and recommendation ...
In this paper, we present results of an auditing study performed over YouTube aimed at investigating...
Introduction: YouTube is a popular website where public can access and gain information from videos ...
As people sheltered globally during the COVID-19 pandemic, many YouTube videos and channels pivoted ...
This paper contributes to the ongoing discussions on the scholarly accessto social media data, discu...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
In this paper, we analyze the content of the most popular videos posted on YouTube in the first phas...
The role played by YouTube's recommendation algorithm in unwittingly promoting misinformation and co...
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...
Dataset for the paper: "It is just a flu: Assessing the Effect of Watch History on YouTube’s Pseudos...
YouTube has revolutionized the way people discover and consume video content. Although YouTube faci...
This article investigates under which video watch conditions YouTube's recommender system tends to d...
This work-in-progress examines the results of algorithm audits of YouTube search and recommendation ...
In this paper, we present results of an auditing study performed over YouTube aimed at investigating...
Introduction: YouTube is a popular website where public can access and gain information from videos ...
As people sheltered globally during the COVID-19 pandemic, many YouTube videos and channels pivoted ...
This paper contributes to the ongoing discussions on the scholarly accessto social media data, discu...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
In this paper, we analyze the content of the most popular videos posted on YouTube in the first phas...