SummaryComplex 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 i...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
The frontal cortex-basal ganglia network plays a pivotal role in adaptive goal-directed behaviors. M...
Empirical studies of decision making have typically assumed that value learning is governed by time,...
Contains fulltext : 161925.pdf (publisher's version ) (Open Access)Complex cogniti...
Complex cognitive processes require sophisticated local processing but also interactions between dis...
SummaryComplex cognitive processes require sophisticated local processing but also interactions betw...
ABSTRACT: Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning...
Representations of our future environment are essential for planning and decision making. Previous r...
International audienceLearning to predict upcoming outcomes based on environmental cues is essential...
Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning signals t...
AbstractReward outcome signalling in the sensory cortex is held as important for linking stimuli to ...
SummaryImagination, defined as the ability to interpret reality in ways that diverge from past exper...
AbstractBasolateral amygdala and orbitofrontal cortex are implicated in cue-outcome learning. In thi...
While there is accumulating evidence for the existence of distinct neural systems supporting goal-di...
Although previous studies have implicated a diverse set of brain regions in reward-related decision ...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
The frontal cortex-basal ganglia network plays a pivotal role in adaptive goal-directed behaviors. M...
Empirical studies of decision making have typically assumed that value learning is governed by time,...
Contains fulltext : 161925.pdf (publisher's version ) (Open Access)Complex cogniti...
Complex cognitive processes require sophisticated local processing but also interactions between dis...
SummaryComplex cognitive processes require sophisticated local processing but also interactions betw...
ABSTRACT: Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning...
Representations of our future environment are essential for planning and decision making. Previous r...
International audienceLearning to predict upcoming outcomes based on environmental cues is essential...
Temporal difference learning (TD) is a popular algorithm in machine learning. Two learning signals t...
AbstractReward outcome signalling in the sensory cortex is held as important for linking stimuli to ...
SummaryImagination, defined as the ability to interpret reality in ways that diverge from past exper...
AbstractBasolateral amygdala and orbitofrontal cortex are implicated in cue-outcome learning. In thi...
While there is accumulating evidence for the existence of distinct neural systems supporting goal-di...
Although previous studies have implicated a diverse set of brain regions in reward-related decision ...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
The frontal cortex-basal ganglia network plays a pivotal role in adaptive goal-directed behaviors. M...
Empirical studies of decision making have typically assumed that value learning is governed by time,...