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Flexibility in valenced reinforcement learning computations across development

Kate Nussenbaum, Juan A. Velez, Bradli T. Washington, Hannah E. Hamling, Catherine A. Hartley

2022Child Development29 citationsDOIOpen Access PDF

Abstract

Optimal integration of positive and negative outcomes during learning varies depending on an environment's reward statistics. The present study investigated the extent to which children, adolescents, and adults (N = 142 8-25 year-olds, 55% female, 42% White, 31% Asian, 17% mixed race, and 8% Black; data collected in 2021) adapt their weighting of better-than-expected and worse-than-expected outcomes when learning from reinforcement. Participants made choices across two contexts: one in which weighting positive outcomes more heavily than negative outcomes led to better performance, and one in which the reverse was true. Reinforcement learning modeling revealed that across age, participants shifted their valence biases in accordance with environmental structure. Exploratory analyses revealed strengthening of context-dependent flexibility with increasing age.

Topics & Concepts

ReinforcementPsychologyFlexibility (engineering)Cognitive psychologyReinforcement learningDevelopmental psychologySocial psychologyArtificial intelligenceComputer scienceMathematicsStatisticsReinforcement Learning in RoboticsNeural dynamics and brain functionAdaptive Dynamic Programming Control