<div><p>Model-based analysis of fMRI data is an important tool for investigating the computational role of different brain regions. With this method, theoretical models of behavior can be leveraged to find the brain structures underlying variables from specific algorithms, such as prediction errors in reinforcement learning. One potential weakness with this approach is that models often have free parameters and thus the results of the analysis may depend on how these free parameters are set. In this work we asked whether this hypothetical weakness is a problem in practice. We first developed general closed-form expressions for the relationship between results of fMRI analyses using different regressors, e.g., one corresponding to the true p...
The voxel-wise general linear model (GLM) approach has arguably become the dominant way to analyze f...
Functional magnetic resonance imaging (fMRI) is a relatively new non-invasive technique that is used...
In this paper we propose a method to create data-driven mappings from components of cognitive models...
Model-based analysis of fMRI data is an important tool for investigating the computational role of d...
Computational modeling has been applied for data analysis in psychology, neuroscience, and psychiatr...
<div><p>Fitting models to behavior is commonly used to infer the latent computational factors respon...
<p>Each grey curve corresponds to a different subject and in blue is the mean across subjects. All c...
Reinforcement learning (RL) is a concept that has been invaluable to fields including machine learni...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
<div><p>Functional Magnetic Resonance Imagine (fMRI) is an important assessment tool in longitudinal...
This article investigates the potential of fMRI to test assumptions about different components in mo...
Abstract: Fitting models to behav-ior is commonly used to infer the latent computational factors res...
<div><p>In this paper we propose a method to create data-driven mappings from components of cognitiv...
In this paper we propose a method to create data-driven mappings from components of cognitive models...
Functional Magnetic Resonance Imagine (fMRI) is an important assessment tool in longitudinal studies...
The voxel-wise general linear model (GLM) approach has arguably become the dominant way to analyze f...
Functional magnetic resonance imaging (fMRI) is a relatively new non-invasive technique that is used...
In this paper we propose a method to create data-driven mappings from components of cognitive models...
Model-based analysis of fMRI data is an important tool for investigating the computational role of d...
Computational modeling has been applied for data analysis in psychology, neuroscience, and psychiatr...
<div><p>Fitting models to behavior is commonly used to infer the latent computational factors respon...
<p>Each grey curve corresponds to a different subject and in blue is the mean across subjects. All c...
Reinforcement learning (RL) is a concept that has been invaluable to fields including machine learni...
Substantial recent work has explored multiple mechanisms of decision-making in humans and other anim...
<div><p>Functional Magnetic Resonance Imagine (fMRI) is an important assessment tool in longitudinal...
This article investigates the potential of fMRI to test assumptions about different components in mo...
Abstract: Fitting models to behav-ior is commonly used to infer the latent computational factors res...
<div><p>In this paper we propose a method to create data-driven mappings from components of cognitiv...
In this paper we propose a method to create data-driven mappings from components of cognitive models...
Functional Magnetic Resonance Imagine (fMRI) is an important assessment tool in longitudinal studies...
The voxel-wise general linear model (GLM) approach has arguably become the dominant way to analyze f...
Functional magnetic resonance imaging (fMRI) is a relatively new non-invasive technique that is used...
In this paper we propose a method to create data-driven mappings from components of cognitive models...