Complex cognitive processes require sophisticated local processing but also interactions between distant brain regions. It is therefore critical to be able to study distant interactions between local computations and the neural representations they act on. Here we report two anatomically and computationally distinct learning signals in lateral orbitofrontal cortex (lOFC) and the dopaminergic ventral midbrain (VM) that predict trial-by-trial changes to a basic internal model in hippocampus. To measure local computations during learning and their interaction with neural representations, we coupled computational fMRI with trial-by-trial fMRI suppression. We find that suppression in a medial temporal lobe network changes trial-by-trial in propo...
A dominant focus in studies of learning and decision-making is the neural coding of scalar reward va...
What are the neural dynamics of choice processes during reinforcement learning? Two largely separate...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Complex cognitive processes require sophisticated local processing but also interactions between dis...
SummaryComplex cognitive processes require sophisticated local processing but also interactions betw...
Contains fulltext : 161925.pdf (publisher's version ) (Open Access)Complex cogniti...
ABSTRACT: Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning...
Mounting evidence suggests that the medial temporal lobe (MTL) and striatal learning systems support...
How do we use our memories of the past to guide decisions we’ve never had to make before? Although e...
The orbitofrontal cortex has long been implicated in associative learning. Early work by Mishkin and...
Shared neuronal variability has been shown to modulate cognitive processing. However, the relationsh...
A dominant focus in studies of learning and decision-making is the neural coding of scalar reward va...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning signals t...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
A dominant focus in studies of learning and decision-making is the neural coding of scalar reward va...
What are the neural dynamics of choice processes during reinforcement learning? Two largely separate...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Complex cognitive processes require sophisticated local processing but also interactions between dis...
SummaryComplex cognitive processes require sophisticated local processing but also interactions betw...
Contains fulltext : 161925.pdf (publisher's version ) (Open Access)Complex cogniti...
ABSTRACT: Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning...
Mounting evidence suggests that the medial temporal lobe (MTL) and striatal learning systems support...
How do we use our memories of the past to guide decisions we’ve never had to make before? Although e...
The orbitofrontal cortex has long been implicated in associative learning. Early work by Mishkin and...
Shared neuronal variability has been shown to modulate cognitive processing. However, the relationsh...
A dominant focus in studies of learning and decision-making is the neural coding of scalar reward va...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning signals t...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
A dominant focus in studies of learning and decision-making is the neural coding of scalar reward va...
What are the neural dynamics of choice processes during reinforcement learning? Two largely separate...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...