One of the key challenges in cognitive neuroscience is determining the mapping between neural activities and mental representations. The functional magnetic resonance imaging (fMRI) provides measure of brain activity in response to cognitive tasks and proved as one of the most effective tool in brain imaging and studying the brain activities. The complexities involved in fMRI classification are: high dimensionality of fMRI data, smaller size of the dataset, interindividual differences, and dependence on data acquisition techniques. The state-of-the-art machine learning techniques popularly used by neuroimaging community for variety of fMRI data analysis has created exciting possibilities to understand deeply the functioning of inner structu...
How neurons influence each other's firing depends on the strength of synaptic connections among them...
In this study, an information theoretic approach is proposed to model brain connectivity during a co...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
Functional magnetic resonance imaging (fMRI) makes it possible to detect brain activities in order t...
Over 100 years, many neuroimaging techniques have been developed to study the functional organizatio...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Over the past decade functional Magnetic Resonance Imaging (fMRI) has emerged as a powerful techniqu...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on sing...
The major obstacle in building classifiers that robustly detect a particular cognitive state across ...
Functional Magnetic Resonance Imaging (fMRI) is one of the leading methods for analyzing brain funct...
Most leading research in basic and clinical neuroscience has been carried out by functional magnetic...
We consider learning to classify cognitive states of human subjects, based on their brain activity o...
In this study, we propose an ensemble learning architecture called "Cognitive Learner", for classifi...
Brain decoding of functional Magnetic Resonance Imaging data is a pattern analysis task that links b...
How neurons influence each other's firing depends on the strength of synaptic connections among them...
In this study, an information theoretic approach is proposed to model brain connectivity during a co...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on singl...
Functional magnetic resonance imaging (fMRI) makes it possible to detect brain activities in order t...
Over 100 years, many neuroimaging techniques have been developed to study the functional organizatio...
Is it feasible to train cross-subject classifiers to decode the cognitive states of human subjects ...
Over the past decade functional Magnetic Resonance Imaging (fMRI) has emerged as a powerful techniqu...
Is it feasible to train classifiers to decode the cognitive state of a human subject, based on sing...
The major obstacle in building classifiers that robustly detect a particular cognitive state across ...
Functional Magnetic Resonance Imaging (fMRI) is one of the leading methods for analyzing brain funct...
Most leading research in basic and clinical neuroscience has been carried out by functional magnetic...
We consider learning to classify cognitive states of human subjects, based on their brain activity o...
In this study, we propose an ensemble learning architecture called "Cognitive Learner", for classifi...
Brain decoding of functional Magnetic Resonance Imaging data is a pattern analysis task that links b...
How neurons influence each other's firing depends on the strength of synaptic connections among them...
In this study, an information theoretic approach is proposed to model brain connectivity during a co...
The main goal of the present study is to launch the foundations of a pipeline for fMRI-based human b...