Attention and learning are cognitive control processes that are closely related. This thesis investigates this inter-relatedness by using computational models to describe the mechanisms that are shared between these processes. Computational models describe the transformation of stimuli to observable variables (behaviour) and contain the latent mechanisms that affect this transformation. Here, I captured these mechanisms with the reinforcement learning (RL) framework applied in two different task contexts and three different projects to show 1) how attentional selection of stimuli involves the learning of values for stimuli, 2) how the learning of stimulus values is influenced by previously learned rules, and 3) how explorations of value-rel...
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...
In this thesis, I present several new results on how the human brain performs value-based learning a...
In every-day life we are usually surrounded by a plethora of stimuli, of which only some may be rele...
2015 - 2016The following thesis deals with computational models of nervous system employed in motor ...
Selective attention is the prioritisation of certain pieces of information over others, and is often...
Contemporary reinforcement learning (RL) theory suggests that choices can be evaluated either by the...
Attention includes processes that evaluate stimuli relevance, select the most relevant stimulus agai...
The ability to integrate past and current feedback associated with di↵erent environmental stimuli is...
International audienceTaking inspiration from neural principles of decision-makingis of particular i...
The aim of this thesis is to determine the changes in BOLD signal of the human brain during various...
The multidimensional nature of our environment raises a fundamental question in the study of learnin...
One of the primary mechanisms thought to underlie action selection in the brain is Reinforcement Lea...
Over recent decades, theoretical neuroscience, helped by computational methods such as Reinforcement...
Humans demonstrate an incredible capacity to learn novel tasks in complex dynamic environments. Rein...
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...
In this thesis, I present several new results on how the human brain performs value-based learning a...
In every-day life we are usually surrounded by a plethora of stimuli, of which only some may be rele...
2015 - 2016The following thesis deals with computational models of nervous system employed in motor ...
Selective attention is the prioritisation of certain pieces of information over others, and is often...
Contemporary reinforcement learning (RL) theory suggests that choices can be evaluated either by the...
Attention includes processes that evaluate stimuli relevance, select the most relevant stimulus agai...
The ability to integrate past and current feedback associated with di↵erent environmental stimuli is...
International audienceTaking inspiration from neural principles of decision-makingis of particular i...
The aim of this thesis is to determine the changes in BOLD signal of the human brain during various...
The multidimensional nature of our environment raises a fundamental question in the study of learnin...
One of the primary mechanisms thought to underlie action selection in the brain is Reinforcement Lea...
Over recent decades, theoretical neuroscience, helped by computational methods such as Reinforcement...
Humans demonstrate an incredible capacity to learn novel tasks in complex dynamic environments. Rein...
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...
In this thesis, I present several new results on how the human brain performs value-based learning a...