Journal article

Neural computations underlying inverse reinforcement learning in the human brain

S Collette, WM Pauli, P Bossaerts, J O’Doherty

Elife | ELIFE SCIENCES PUBLICATIONS LTD | Published : 2017

Abstract

In inverse reinforcement learning an observer infers the reward distribution available for actions in the environment solely through observing the actions implemented by another agent. To address whether this computational process is implemented in the human brain, participants underwent fMRI while learning about slot machines yielding hidden preferred and non-preferred food outcomes with varying probabilities, through observing the repeated slot choices of agents with similar and dissimilar food preferences. Using formal model comparison, we found that participants implemented inverse RL as opposed to a simple imitation strategy, in which the actions of the other agent are copied instead of..

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University of Melbourne Researchers