Learning occurs when an outcome differs from expectations, generating a reward prediction error signal (RPE). The RPE signal has been hypothesized to simultaneously embody the valence of an outcome (better or worse than expected) and its surprise (how far from expectations). Nonetheless, growing evidence suggests that separate representations of the two RPE components exist in the human brain. Meta-analyses provide an opportunity to test this hypothesis and directly probe the extent to which the valence and surprise of the error signal are encoded in separate or overlapping networks. We carried out several meta-analyses on a large set of fMRI studies investigating the neural basis of RPE, locked at decision outcome. We identified two valenc...
Reward learning depends on accurate reward associations with potential choices. These associations c...
The feedback-related negativity (FRN) is a well-established electrophysiological correlate of feedba...
In the past two decades, reinforcement learning (RL) has become a popular framework for understandin...
Learning occurs when an outcome differs from expectations, generating a reward prediction error sign...
Learning occurs when an outcome differs from expectations, generating a reward prediction error sign...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reward learning depends on accurate reward associations with potential choices. These associations c...
The feedback-related negativity (FRN) is a well-established electrophysiological correlate of feedba...
In the past two decades, reinforcement learning (RL) has become a popular framework for understandin...
Learning occurs when an outcome differs from expectations, generating a reward prediction error sign...
Learning occurs when an outcome differs from expectations, generating a reward prediction error sign...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Reward learning depends on accurate reward associations with potential choices. These associations c...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
Activation likelihood estimation (ALE) meta-analyses were used to examine the neural correlates of p...
In reinforcement learning (RL), an agent makes sequential decisions to maximise the reward it can ob...
Reward learning depends on accurate reward associations with potential choices. These associations c...
The feedback-related negativity (FRN) is a well-established electrophysiological correlate of feedba...
In the past two decades, reinforcement learning (RL) has become a popular framework for understandin...