Reinforcement learning (RL) models have advanced our understanding of how animals learn and make decisions, and how the brain supports some aspects of learning. However, the neural computations that are explained by RL algorithms fall short of explaining many sophisticated aspects of human decision making, including the generalization of learned information, one-shot learning, and the synthesis of task information in complex environments.. Instead, these aspects of instrumental behavior are assumed to be supported by the brain's executive functions (EF). We review recent findings that highlight the importance of EF in learning. Specifically, we advance the theory that EF sets the stage for canonical RL computations in the brain, providing i...
Despite decades of experimental and clinical practice, the neuropsychological mechanisms underlying ...
As Baum argues, reinforcement learning is essential to intelligence (Baum 2004). It enabled humans w...
Reinforcement learning (RL) has become a dominant computational paradigm for modeling psychological ...
The frontal lobes subserve decision-making and executive control—that is, the selection and coordina...
<div><p>The frontal lobes subserve decision-making and executive control—that is, the selection and ...
International audienceThe frontal lobes subserve decision-making and executive control--that is, the...
Here we review recent developments in the application of reinforcement-learning theory as a means of...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
In recent years, ideas from the computational field of reinforcement learning have revolutionized th...
Learning from rewards and punishments is essential to survival and facilitates flexible human behavi...
Extant research suggests a number of systems, including reinforcement and attentional systems, contr...
We develop a novel, biologically detailed neural model of reinforcement learning (RL) processes in t...
Work is presented aimed at understanding the function of the basal ganglia in reward-related learnin...
Attention and learning are cognitive control processes that are closely related. This thesis investi...
Despite decades of experimental and clinical practice, the neuropsychological mechanisms underlying ...
As Baum argues, reinforcement learning is essential to intelligence (Baum 2004). It enabled humans w...
Reinforcement learning (RL) has become a dominant computational paradigm for modeling psychological ...
The frontal lobes subserve decision-making and executive control—that is, the selection and coordina...
<div><p>The frontal lobes subserve decision-making and executive control—that is, the selection and ...
International audienceThe frontal lobes subserve decision-making and executive control--that is, the...
Here we review recent developments in the application of reinforcement-learning theory as a means of...
Reinforcement learning constitutes a valuable framework for reward-based decision making in humans, ...
Reinforcement learning (RL) in simple instrumental tasks is usually modeled as a monolithic process ...
In recent years, ideas from the computational field of reinforcement learning have revolutionized th...
Learning from rewards and punishments is essential to survival and facilitates flexible human behavi...
Extant research suggests a number of systems, including reinforcement and attentional systems, contr...
We develop a novel, biologically detailed neural model of reinforcement learning (RL) processes in t...
Work is presented aimed at understanding the function of the basal ganglia in reward-related learnin...
Attention and learning are cognitive control processes that are closely related. This thesis investi...
Despite decades of experimental and clinical practice, the neuropsychological mechanisms underlying ...
As Baum argues, reinforcement learning is essential to intelligence (Baum 2004). It enabled humans w...
Reinforcement learning (RL) has become a dominant computational paradigm for modeling psychological ...