Litcius/Paper detail

Common sense or censorship: How algorithmic moderators and message type influence perceptions of online content deletion

João Gonçalves, Ina Weber, Gina Masullo Chen, Marisa Torres da Silva, Joep Hofhuis

2021New Media & Society38 citationsDOIOpen Access PDF

Abstract

Hateful content online is a concern for social media platforms, policymakers, and the public. This has led high-profile content platforms, such as Facebook, to adopt algorithmic content-moderation systems; however, the impact of algorithmic moderation on user perceptions is unclear. We experimentally test the extent to which the type of content being removed (profanity vs hate speech) and the explanation given for its removal (no explanation vs link to community guidelines vs specific explanation) influence user perceptions of human and algorithmic moderators. Our preregistered study encompasses representative samples ( N = 2870) from the United States, the Netherlands, and Portugal. Contrary to expectations, our findings suggest that algorithmic moderation is perceived as more transparent than human, especially when no explanation is given for content removal. In addition, sending users to community guidelines for further information on content deletion has negative effects on outcome fairness and trust.

Topics & Concepts

ModerationContent (measure theory)PerceptionCensorshipSocial mediaSocial psychologyTest (biology)PsychologyInternet privacyComputer scienceUser-generated contentContent analysisSense of communityWorld Wide WebSociologyPolitical scienceMathematicsBiologySocial scienceMathematical analysisPaleontologyNeuroscienceLawHate Speech and Cyberbullying DetectionSocial Media and PoliticsBullying, Victimization, and Aggression