SummaryEffective error-driven learning benefits from scaling of prediction errors to reward variability. Such behavioral adaptation may be facilitated by neurons coding prediction errors relative to the standard deviation (SD) of reward distributions. To investigate this hypothesis, we required participants to predict the magnitude of upcoming reward drawn from distributions with different SDs. After each prediction, participants received a reward, yielding trial-by-trial prediction errors. In line with the notion of adaptive coding, BOLD response slopes in the Substantia Nigra/Ventral Tegmental Area (SN/VTA) and ventral striatum were steeper for prediction errors occurring in distributions with smaller SDs. SN/VTA adaptation was not instan...
International audiencePrediction of future rewards and discrepancy between actual and expected outco...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
Effective error-driven learning benefits from scaling of prediction errors to reward variability. Su...
SummaryEffective error-driven learning benefits from scaling of prediction errors to reward variabil...
Learning to optimally predict rewards requires agents to account for fluctuations in reward value. R...
Effective error-driven learning requires individuals to adapt learning to environmental reward varia...
Dopaminergic reward prediction error neurons in the midbrain are the most prominent type of neurons ...
Physiologic studies revealed that neurons in the dopaminergic midbrain of non-human primates encode ...
To accurately predict rewards associated with states or actions, the variability of observations has...
Given that the range of rewarding and punishing outcomes of actions is large but neural coding capac...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Goal-directed and instrumental learning are both important controllers of human behavior. Learning a...
Given that the range of rewarding and punishing outcomes of actions is large but neural coding capac...
UNLABELLED: Given that the range of rewarding and punishing outcomes of actions is large but neural ...
International audiencePrediction of future rewards and discrepancy between actual and expected outco...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
Effective error-driven learning benefits from scaling of prediction errors to reward variability. Su...
SummaryEffective error-driven learning benefits from scaling of prediction errors to reward variabil...
Learning to optimally predict rewards requires agents to account for fluctuations in reward value. R...
Effective error-driven learning requires individuals to adapt learning to environmental reward varia...
Dopaminergic reward prediction error neurons in the midbrain are the most prominent type of neurons ...
Physiologic studies revealed that neurons in the dopaminergic midbrain of non-human primates encode ...
To accurately predict rewards associated with states or actions, the variability of observations has...
Given that the range of rewarding and punishing outcomes of actions is large but neural coding capac...
Both perceptual inference and motor responses are shaped by learned probabilities. For example, stim...
Goal-directed and instrumental learning are both important controllers of human behavior. Learning a...
Given that the range of rewarding and punishing outcomes of actions is large but neural coding capac...
UNLABELLED: Given that the range of rewarding and punishing outcomes of actions is large but neural ...
International audiencePrediction of future rewards and discrepancy between actual and expected outco...
Prediction-error signals consistent with formal models of “reinforcement learning” (RL) have repeate...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...