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Author(s)

William Brady

Bjorn Lindstrom

Joshua Jackson

MJ Crockett

Human social learning is increasingly occurring on online social platforms, such as Twitter, Facebook, and TikTok. On these platforms, algorithms exploit existing social-learning biases (i.e., towards prestigious, ingroup, moral, and emotional information, or ‘PRIME’ information) to sustain users’ attention and maximize engagement. Here, we synthesize emerging insights into ‘algorithm-mediated social learning’ and propose a framework that examines its consequences in terms of functional misalignment. We suggest that, when social-learning biases are exploited by algorithms, PRIME information becomes amplified via human–algorithm interactions in the digital social environment in ways that cause social misperceptions and conflict, and spread misinformation. We discuss solutions for reducing functional misalignment, including algorithms promoting bounded diversification and increasing transparency of algorithmic amplification.
Date Published: 2023
Citations: Brady, William, Bjorn Lindstrom, Joshua Jackson, MJ Crockett. 2023. Algorithm-mediated social learning in online social networks. Trends in Cognitive Sciences. (10)947-960.