An increasing number of projects in neuroscience require statistical analysis of high-dimensional data, as, for instance, in the prediction of behavior from neural firing or in the operation of artificial devices from brain recordings in brain-machine interfaces. Although prevalent, classical linear analysis techniques are often numerically fragile in high dimensions due to irrelevant, redundant, and noisy information. We developed a robust Bayesian linear regression algorithm that automatically detects relevant features and excludes irrelevant ones, all in a computationally efficient manner. In comparison with standard linear methods, the new Bayesian method regularizes against overfitting, is computationally efficient (unlike previously p...
International audienceIn this article we describe a novel method for regularized regression and appl...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
The ability to accurately estimate effective connectivity among brain regions from neuroimaging data...
AbstractAn increasing number of projects in neuroscience require statistical analysis of high-dimens...
<p>Brain-machine interfaces (BMIs) are devices that transform neural activity into commands executed...
In numerous neuroscience studies, multichannel EEG data are often recorded over multiple trial perio...
We present a novel algorithm for efficient learning and feature selection in high-dimensional regres...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
A Bayesian approach is proposed for statistical analysis of fMRI data sets in a two state (on-off) a...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
International audienceIn this article we describe a novel method for regularized regression and appl...
International audienceIn this article we describe a novel method for regularized regression and appl...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
The ability to accurately estimate effective connectivity among brain regions from neuroimaging data...
AbstractAn increasing number of projects in neuroscience require statistical analysis of high-dimens...
<p>Brain-machine interfaces (BMIs) are devices that transform neural activity into commands executed...
In numerous neuroscience studies, multichannel EEG data are often recorded over multiple trial perio...
We present a novel algorithm for efficient learning and feature selection in high-dimensional regres...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
Many modern biomedical studies record vast amounts of data on individual subjects. The observed data...
This paper describes and validates a novel framework using the Approximate Bayesian Computation (ABC...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
A Bayesian approach is proposed for statistical analysis of fMRI data sets in a two state (on-off) a...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
Typically in neuroimaging we are looking to extract some pertinent information from imperfect, noisy...
International audienceIn this article we describe a novel method for regularized regression and appl...
International audienceIn this article we describe a novel method for regularized regression and appl...
Effective neural motor prostheses require a method for decoding neural activity representing desired...
The ability to accurately estimate effective connectivity among brain regions from neuroimaging data...