Considering the two-class classification problem in brain imaging data analysis, we propose a sparse representation-based multi-variate pattern analysis (MVPA) algorithm to localize brain activation patterns corresponding to different stimulus classes/brain states respectively. Feature selection can be modeled as a sparse representation (or sparse regression) problem. Such technique has been successfully applied to voxel selection in fMRI data analysis. However, single selection based on sparse representation or other methods is prone to obtain a subset of the most informative features rather than all. Herein, our proposed algorithm recursively eliminates informative features selected by a sparse regression method until the decoding accurac...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
One of the major drawbacks of brain decoding from the functional magnetic resonance images (fMRI) is...
Abstract. Sparse models embed variable selection into model learning (e.g., by using l1-norm regular...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Multivariate pattern analysis approaches toward detection of brain regions from fMRI data have been ...
International audienceThe use of machine learning tools is gaining popularity in neuroimaging, as it...
Research in neuroscience faces the challenge of integrating information across different spatial sca...
Multivariate classification techniques have been widely applied to decode brain states using functio...
AbstractBy exploiting information that is contained in the spatial arrangement of neural activations...
By finding broader temporal and spatial patterns of brain activity, dictionary learning and sparse c...
A single-task functional magnetic resonance imaging (fMRI) experiment may only partially highlight a...
Statistical parametric mapping (SPM) of functional mag-netic resonance imaging (fMRI) uses a canonic...
© 2019 Asif IqbalFunctional Magnetic Resonance Imaging (fMRI) is a non-invasive neuroimaging techniq...
<p>The first 1000 voxels of spatial patterns identified by sparse representation were projected on t...
International audienceInverse inference, or "brain reading", is a recent paradigm for analyzing func...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
One of the major drawbacks of brain decoding from the functional magnetic resonance images (fMRI) is...
Abstract. Sparse models embed variable selection into model learning (e.g., by using l1-norm regular...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
Multivariate pattern analysis approaches toward detection of brain regions from fMRI data have been ...
International audienceThe use of machine learning tools is gaining popularity in neuroimaging, as it...
Research in neuroscience faces the challenge of integrating information across different spatial sca...
Multivariate classification techniques have been widely applied to decode brain states using functio...
AbstractBy exploiting information that is contained in the spatial arrangement of neural activations...
By finding broader temporal and spatial patterns of brain activity, dictionary learning and sparse c...
A single-task functional magnetic resonance imaging (fMRI) experiment may only partially highlight a...
Statistical parametric mapping (SPM) of functional mag-netic resonance imaging (fMRI) uses a canonic...
© 2019 Asif IqbalFunctional Magnetic Resonance Imaging (fMRI) is a non-invasive neuroimaging techniq...
<p>The first 1000 voxels of spatial patterns identified by sparse representation were projected on t...
International audienceInverse inference, or "brain reading", is a recent paradigm for analyzing func...
Representing signals as linear combinations of basis vectors sparsely selected from an overcom-plete...
One of the major drawbacks of brain decoding from the functional magnetic resonance images (fMRI) is...
Abstract. Sparse models embed variable selection into model learning (e.g., by using l1-norm regular...