Summary: Technological advances have led to a proliferation of structured big-data that is often collected and stored in a distributed manner. Examples include climate data, social networking data, crime incidence data, and biomedical imaging. We are specifically motivated to build predictive models for multi-subject neuroimaging data based on each subject’s brain imaging scans. This is an ultra-high-dimensional problem that consists of a matrix of covariates (brain locations by time points) for each subject; few methods currently exist to fit supervised models directly to this tensor data. We propose a novel modeling and algorithmic strategy to apply generalized linear models (GLMs) to this massive tensor data in which one set of variables...
Across a variety of scientific disciplines, sparse inverse covariance estimation is a popular tool f...
This paper extends earlier work on spatial modeling of fMRI data to the temporal domain, providing a...
International audienceInverse inference, or "brain reading", is a recent paradigm for analyzing func...
Technological advances have led to a proliferation of high-dimensional and highly correlated data. ...
We study a method of optimal data-driven aggregation of classifiers in a convex combination and esta...
We study a method of optimal data-driven aggregation of classifiers in a convex combination and esta...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
Recent developments in data sharing and availability provide a vast new window of opportunity for la...
International audienceCognitive neuroscience is enjoying rapid increase in extensive public brain-im...
International audienceThe traditional goals of quantitative analytics cherish simple, transparent mo...
International audienceThe use of brain images as markers for diseases or behavioral differences is c...
LNCS n°9123Knowing how the Human brain is anatomically and function-ally organized at the level of a...
Distributed Machine Learning (DML) has gained its importance more than ever in this era of Big Data....
Recently, linear formulations and convex optimization methods have been proposed to predict diffusio...
International audienceBrain decoding relates behavior to brain activity through predictive models. T...
Across a variety of scientific disciplines, sparse inverse covariance estimation is a popular tool f...
This paper extends earlier work on spatial modeling of fMRI data to the temporal domain, providing a...
International audienceInverse inference, or "brain reading", is a recent paradigm for analyzing func...
Technological advances have led to a proliferation of high-dimensional and highly correlated data. ...
We study a method of optimal data-driven aggregation of classifiers in a convex combination and esta...
We study a method of optimal data-driven aggregation of classifiers in a convex combination and esta...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
Recent developments in data sharing and availability provide a vast new window of opportunity for la...
International audienceCognitive neuroscience is enjoying rapid increase in extensive public brain-im...
International audienceThe traditional goals of quantitative analytics cherish simple, transparent mo...
International audienceThe use of brain images as markers for diseases or behavioral differences is c...
LNCS n°9123Knowing how the Human brain is anatomically and function-ally organized at the level of a...
Distributed Machine Learning (DML) has gained its importance more than ever in this era of Big Data....
Recently, linear formulations and convex optimization methods have been proposed to predict diffusio...
International audienceBrain decoding relates behavior to brain activity through predictive models. T...
Across a variety of scientific disciplines, sparse inverse covariance estimation is a popular tool f...
This paper extends earlier work on spatial modeling of fMRI data to the temporal domain, providing a...
International audienceInverse inference, or "brain reading", is a recent paradigm for analyzing func...