Social Science Research Council Research AMP Just Tech
Citation

Reranking partisan animosity in algorithmic social media feeds alters affective polarization

Author:
Piccardi, Tiziano; Saveski, Martin; Jia, Chenyan; Hancock, Jeffrey; Tsai, Jeanne L.; Bernstein, Michael S.
Publication:
Science
Year:
2025

Today, social media platforms hold the sole power to study the effects of feed-ranking algorithms. We developed a platform-independent method that reranks participants’ feeds in real time and used this method to conduct a preregistered 10-day field experiment with 1256 participants on X during the 2024 US presidential campaign. Our experiment used a large language model to rerank posts that expressed antidemocratic attitudes and partisan animosity (AAPA). Decreasing or increasing AAPA exposure shifted out-party partisan animosity by more than 2 points on a 100-point feeling thermometer, with no detectable differences across party lines, providing causal evidence that exposure to AAPA content alters affective polarization. This work establishes a method to study feed algorithms without requiring platform cooperation, enabling independent evaluation of ranking interventions in naturalistic settings.