A computational model of reward learning and habits on social media
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Abstract
Social media have fundamentally transformed how we live and communicate. However, the methods to study how our cognitive systems interact with technology platforms are very limited. Computational modelling represents a new avenue to uncover the finegrained cognitive processes driving social media behaviour. Here, we develop a novel computational model of real-world social media posting data, adapted from the animal reward learning literature. Across a Twitter dataset (n= 2,696 users), including a preregistered confirmatory sample, we separate the contribution of different cognitive processes and show that a hybrid goal-directed and habitual reward-seeking process underlies social media posting behaviour. Further, younger people and women are more goal-directed – updating their strategy more purposefully to maximise social media rewards – while older users and men tend to be more habitual. Our model paves the way for large-scale investigation into the cross-species cognitive processes motivating social media behaviours, and their downstream impacts on individuals and society.
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- europepmc
- last seen: 2026-05-20T01:45:00.602351+00:00