TopicNeuro

temporal difference learning

4 ePosters2 Seminars

Latest

SeminarNeuroscience

Learning to Express Reward Prediction Error-like Dopaminergic Activity Requires Plastic Representations of Time

Harel Shouval
The University of Texas at Houston
Jun 14, 2023

The dominant theoretical framework to account for reinforcement learning in the brain is temporal difference (TD) reinforcement learning. The TD framework predicts that some neuronal elements should represent the reward prediction error (RPE), which means they signal the difference between the expected future rewards and the actual rewards. The prominence of the TD theory arises from the observation that firing properties of dopaminergic neurons in the ventral tegmental area appear similar to those of RPE model-neurons in TD learning. Previous implementations of TD learning assume a fixed temporal basis for each stimulus that might eventually predict a reward. Here we show that such a fixed temporal basis is implausible and that certain predictions of TD learning are inconsistent with experiments. We propose instead an alternative theoretical framework, coined FLEX (Flexibly Learned Errors in Expected Reward). In FLEX, feature specific representations of time are learned, allowing for neural representations of stimuli to adjust their timing and relation to rewards in an online manner. In FLEX dopamine acts as an instructive signal which helps build temporal models of the environment. FLEX is a general theoretical framework that has many possible biophysical implementations. In order to show that FLEX is a feasible approach, we present a specific biophysically plausible model which implements the principles of FLEX. We show that this implementation can account for various reinforcement learning paradigms, and that its results and predictions are consistent with a preponderance of both existing and reanalyzed experimental data.

ePosterNeuroscience

Reward Bases: instant reward revaluation with temporal difference learning

Beren Millidge,Mark Walton,Rafal Bogacz

COSYNE 2022

ePosterNeuroscience

Reward Bases: instant reward revaluation with temporal difference learning

Beren Millidge,Mark Walton,Rafal Bogacz

COSYNE 2022

ePosterNeuroscience

Minimal neural circuit elements for dopaminergic temporal difference learning

Malcolm Campbell, Yongsoo Ra, Shudi Xu, Sara Matias, Mitsuko Watabe-Uchida, Naoshige Uchida

COSYNE 2025

ePosterNeuroscience

Temporal difference learning models explain behavior and dopamine during contingency degradation

Mark Burrell, Venkatesh Murthy, Naoshige Uchida, Lechen Qian, Jay Hennig, Sara Matias, Samuel Gershman

COSYNE 2025

temporal difference learning coverage

6 items

ePoster4
Seminar2
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