Litcius/Paper detail

Signed and unsigned reward prediction errors dynamically enhance learning and memory

Nina Rouhani, Yael Niv

2021eLife109 citationsDOIOpen Access PDF

Abstract

Memory helps guide behavior, but which experiences from the past are prioritized? Classic models of learning posit that events associated with unpredictable outcomes as well as, paradoxically, predictable outcomes, deploy more attention and learning for those events. Here, we test reinforcement learning and subsequent memory for those events, and treat signed and unsigned reward prediction errors (RPEs), experienced at the reward-predictive cue or reward outcome, as drivers of these two seemingly contradictory signals. By fitting reinforcement learning models to behavior, we find that both RPEs contribute to learning by modulating a dynamically changing learning rate. We further characterize the effects of these RPE signals on memory and show that both signed and unsigned RPEs enhance memory, in line with midbrain dopamine and locus-coeruleus modulation of hippocampal plasticity, thereby reconciling separate findings in the literature.

Topics & Concepts

Reinforcement learningReinforcementNeuroscienceMean squared prediction errorPsychologyCognitive psychologyDopamineLocus coeruleusComputer scienceArtificial intelligenceMachine learningSocial psychologyCentral nervous systemReceptor Mechanisms and SignalingMemory and Neural MechanismsNeural and Behavioral Psychology Studies