Algorithmic Recommendations’ Role for the Interrelatedness of Counter-Messages and Polluted Content on YouTube – A Network Analysis

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Keywords:

information network analysis, YouTube, algorithms, counter-messages, polluted content

Abstract

Counter-messages are used by civil education, youth prevention actors, and security agencies to counter the magnitude of polluted content. On the Internet, algorithmic operations of intermediaries affect how users encounter and receive polluted content. As counter-messages often show similar keywords, algorithms establish connections between counter-messages and polluted content, primarily because they share mutual topics. Against the background of legislative attempts to stop the spread of extremist online content, this paper aims to further investigate the interrelatedness of counter-messages and polluted content on YouTube due to the platform’s recommendation algorithm. To that end, two information network analyses were conducted based on each five seed videos of two differently designed counter-message campaigns one year after their publication on YouTube in 2019. Five thousand four hundred of the 35,982 videos of the two networks were analyzed qualitatively and manually. Results show that counter-messages are indirectly strongly connected to more polluted content. We further identify the campaigns’ design and setup on YouTube as factors that can cause the interrelatedness between counter-messages and polluted content.

Author Biographies

Lisa Zieringer, LMU Munich

Lisa Zieringer (M.A., LMU Munich) is a research associate and PhD student at the Department of Media and Communication at LMU Munich, Germany. Her research interests include political communication with a focus on the intersection of communication and technology.

Diana Rieger, LMU Munich

Diana Rieger (Prof. Dr., LMU Munich) is a professor at the Department of Media and Communication at LMU Munich, Germany. Her work addresses the staging and effects of extremist online propaganda and hate speech as well as the potential of counter-strategies. She investigates these topics from a communication and media psychological perspective by combining quantitative, qualitative and computational methods.

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Published

2023-07-04 — Updated on 2023-07-04

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How to Cite

Zieringer, L., & Rieger, D. (2023). Algorithmic Recommendations’ Role for the Interrelatedness of Counter-Messages and Polluted Content on YouTube – A Network Analysis. Computational Communication Research, 5(1), 109–140. Retrieved from https://computationalcommunication.org/ccr/article/view/136

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Articles