Although previous studies have implicated a diverse set of brain regions in reward-related decision making, it is not yet known which of these regions contain information that directly reflects a decision. Here, we measured brain activity using functional MRI in a group of subjects while they performed a simple reward-based decision-making task: probabilistic reversal-learning. We recorded brain activity from nine distinct regions of interest previously implicated in decision making and separated out local spatially distributed signals in each region from global differences in signal. Using a multivariate analysis approach, we determined the extent to which global and local signals could be used to decode subjects' subsequent behavioral cho...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
The aim of this thesis is to determine the changes in BOLD signal of the human brain during various...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Although previous studies have implicated a diverse set of brain regions in reward-related decision ...
To make sound economic decisions, the brain needs to compute several different value-related signals...
To make sound economic decisions, the brain needs to compute several different value-related signals...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
BACKGROUND: Choosing between actions associated with uncertain rewards and punishments is mediated b...
Estimating the value of potential actions is crucial for learning and adaptive behavior. We know lit...
Reward-seeking behavior depends critically on processing of positive and negative information at var...
Many real-life decision-making problems incorporate higher-order structure, involving interdependenc...
To explain investing decisions, financial theorists invoke two opposing metrics: expected reward and...
The computational framework of reinforcement learning has been used to forward our understanding of ...
Making sequential decisions to harvest rewards is a notoriously difficult problem. One difficulty is...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
The aim of this thesis is to determine the changes in BOLD signal of the human brain during various...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Although previous studies have implicated a diverse set of brain regions in reward-related decision ...
To make sound economic decisions, the brain needs to compute several different value-related signals...
To make sound economic decisions, the brain needs to compute several different value-related signals...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
Avoiding repeated mistakes and learning to reinforce rewarding decisions is critical for human survi...
BACKGROUND: Choosing between actions associated with uncertain rewards and punishments is mediated b...
Estimating the value of potential actions is crucial for learning and adaptive behavior. We know lit...
Reward-seeking behavior depends critically on processing of positive and negative information at var...
Many real-life decision-making problems incorporate higher-order structure, involving interdependenc...
To explain investing decisions, financial theorists invoke two opposing metrics: expected reward and...
The computational framework of reinforcement learning has been used to forward our understanding of ...
Making sequential decisions to harvest rewards is a notoriously difficult problem. One difficulty is...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...
The aim of this thesis is to determine the changes in BOLD signal of the human brain during various...
Reward-guided decision-making and learning depends on distributed neural circuits with many componen...