A distributional code for value in dopamine-based reinforcement learning

Publication information:

Dabney, W.; Kurth-Nelson, Z.; Uchida, N.; Starkweather, C. K.; Hassabis, D.; Munos, R.; Botvinick, M.
A Distributional Code for Value in Dopamine-Based Reinforcement Learning. Nature 2020, 577 (7792), 671-675.

Abstract

Since its introduction, the reward prediction error theory of dopamine has explained a wealth of empirical phenomena, providing a unifying framework for understanding the representation of reward and value in the brain1,2,3. According to the now canonical theory, reward predictions are represented as a single scalar quantity, which supports learning about the expectation, or mean, of stochastic outcomes. Here we propose an account of dopamine-based reinforcement learning inspired by recent artificial intelligence research on distributional reinforcement learning4,5,6. We hypothesized that the brain represents possible future rewards not as a single mean, but instead as a probability distribution, effectively representing multiple future outcomes simultaneously and in parallel. This idea implies a set of empirical predictions, which we tested using single-unit recordings from mouse ventral tegmental area. Our findings provide strong evidence for a neural realization of distributional reinforcement learning.