<p>In many practical scenarios, prediction for high-dimensional observations can be accurately performed using only a fraction of the existing features. However, the set of relevant predictive features, known as the sparsity pattern, varies across data. For instance, features that are informative for a subset of observations might be useless for the rest. In fact, in such cases, the dataset can be seen as an aggregation of samples belonging to several low-dimensional sub-models, potentially due to different generative processes. My thesis introduces several techniques for identifying sparse predictive structures and the areas of the feature space where these structures are effective. This information allows the training of models which perf...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
This paper reviews predictive inference and feature selection for generalized linear models with sca...
In many practical scenarios, prediction for high-dimensional observations can be accurately performe...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
In this thesis we discuss machine learning methods performing automated variable selection for learn...
Extracting knowledge and providing insights into complex mechanisms underlying noisy high-dimensiona...
International audienceThe prediction of behavioral covariates from functional MRI (fMRI) is known as...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
© 2017 International Machine Learning Society (IMLS). All rights reserved. We consider structure dis...
The automatic discovery of a significant low-dimensional feature representation from a given data se...
The public defense on 14th May 2020 at 16:00 (4 p.m.) will be organized via remote technology. Li...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
This paper reviews predictive inference and feature selection for generalized linear models with sca...
In many practical scenarios, prediction for high-dimensional observations can be accurately performe...
Dimensionality reduction techniques such as feature extraction and feature selection are critical to...
In this thesis we discuss machine learning methods performing automated variable selection for learn...
Extracting knowledge and providing insights into complex mechanisms underlying noisy high-dimensiona...
International audienceThe prediction of behavioral covariates from functional MRI (fMRI) is known as...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
© 2017 International Machine Learning Society (IMLS). All rights reserved. We consider structure dis...
The automatic discovery of a significant low-dimensional feature representation from a given data se...
The public defense on 14th May 2020 at 16:00 (4 p.m.) will be organized via remote technology. Li...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
A key ingredient to modern data analysis is probability density estimation. However, it is well know...
This paper reviews predictive inference and feature selection for generalized linear models with sca...