Predictive coding postulates that we make (top-down) predictions about the world and that we continuously compare incoming (bottom-up) sensory information with these predictions, in order to update our models and perception so as to better reflect reality. That is, our so-called “Bayesian brains” continuously create and update generative models of the world, inferring (hidden) causes from (sensory) consequences. Neuroimaging datasets enable the detailed investigation of such modeling and updating processes, and these datasets can themselves be analyzed with Bayesian approaches. These offer methodological advantages over classical statistics. Specifically, any number of models can be compared, the models need not be nested, and the “null mod...
The authors developed a method for analyzing neural electromagnetic data that allows probabilistic i...
Recent computational models of perception conceptualize auditory oddball responses as signatures of ...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
AbstractThis technical note describes the construction of posterior probability maps (PPMs) for Baye...
Bayesian model selection (BMS) is a powerful method for determining the most likely among a set of c...
This dataset was obtained at the Queensland Brain Institute, Australia, using a 64 channel EEG Biose...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
The assumption that the human brain employs information processing in terms of probability distribut...
The purpose of brain mapping techniques is to advance the understanding of the relationship between ...
In this dissertation, we discuss Bayesian modeling approaches for identifying brain regions that res...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2008....
International audienceNetwork connectivity fingerprints are among today's best choices to obtain a f...
The authors developed a method for analyzing neural electromagnetic data that allows probabilistic i...
Recent computational models of perception conceptualize auditory oddball responses as signatures of ...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
Predictive coding postulates that we make (top-down) predictions about the world and that we continu...
AbstractThis technical note describes the construction of posterior probability maps (PPMs) for Baye...
Bayesian model selection (BMS) is a powerful method for determining the most likely among a set of c...
This dataset was obtained at the Queensland Brain Institute, Australia, using a 64 channel EEG Biose...
Neural rhythms or oscillations are ubiquitous in neuroimaging data. These spectral responses have be...
The assumption that the human brain employs information processing in terms of probability distribut...
The purpose of brain mapping techniques is to advance the understanding of the relationship between ...
In this dissertation, we discuss Bayesian modeling approaches for identifying brain regions that res...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2008....
International audienceNetwork connectivity fingerprints are among today's best choices to obtain a f...
The authors developed a method for analyzing neural electromagnetic data that allows probabilistic i...
Recent computational models of perception conceptualize auditory oddball responses as signatures of ...
This article proposes a Bayesian spatio-temporal model for source reconstruction of M/EEG data. The ...