TY - JOUR T1 - Optimistic reinforcement learning: computational and neural bases JF - bioRxiv DO - 10.1101/038778 SP - 038778 AU - G. Lefebvre AU - M. Lebreton AU - F. Meyniel AU - S. Bourgeois-Gironde AU - S. Palminteri Y1 - 2016/01/01 UR - http://biorxiv.org/content/early/2016/10/03/038778.abstract N2 - While forming and updating beliefs about future life outcomes, people tend to consider good news and to disregard bad news. This tendency is supposed to support the optimism bias. Whether this learning bias is specific to “high-level” abstract belief update or a particular expression of a more general “low-level” reinforcement learning process is unknown. Here we report evidence in favor of the second hypothesis. In a simple instrumental learning task, participants incorporated better-than-expected outcomes at a higher rate compared to worse-than-expected ones. In addition, functional imaging indicated that inter-individual difference in the expression of optimistic update corresponds to enhanced prediction error signaling in the reward circuitry. Our results constitute a new step in the understanding of the genesis of optimism bias at the neurocomputational level. ER -