High dimensional data are rapidly growing in many domains due to the development of technological advances which helps collect data with a large number of variables to better understand a given phenomenon of interest. Particular examples appear in genomics, fMRI data analysis, large-scale healthcare analytics, text/image analysis and astronomy. In the last two decades regularisation approaches have become the methods of choice for analysing such high dimensional data. This paper aims to study the performance of regularisation methods, including the recently proposed method called de-biased lasso, for the analysis of high dimensional data under different sparse and non-sparse situations. Our investigation concerns prediction, parameter estim...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
High dimensional data are rapidly growing in many domains due to the development of technological ad...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
The increased availability of high-dimensional data, and appeal of a “sparse” solution has made pena...
In this thesis, we consider the linear regression model in the high dimensional setup. In particular...
Penalized likelihood approaches are widely used for high-dimensional regression. Although many metho...
The public defense on 14th May 2020 at 16:00 (4 p.m.) will be organized via remote technology. Li...
In this paper we develop inference for high dimensional linear models, with serially correlated erro...
38 pagesWe review recent results for high-dimensional sparse linear regression in the practical case...
Nowadays, data analysis applied to high dimension has arisen. The edification of high-dimensional da...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
High dimensional data are rapidly growing in many domains due to the development of technological ad...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
The increased availability of high-dimensional data, and appeal of a “sparse” solution has made pena...
In this thesis, we consider the linear regression model in the high dimensional setup. In particular...
Penalized likelihood approaches are widely used for high-dimensional regression. Although many metho...
The public defense on 14th May 2020 at 16:00 (4 p.m.) will be organized via remote technology. Li...
In this paper we develop inference for high dimensional linear models, with serially correlated erro...
38 pagesWe review recent results for high-dimensional sparse linear regression in the practical case...
Nowadays, data analysis applied to high dimension has arisen. The edification of high-dimensional da...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...