15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarkers or to infer gene regulatory networks from transcriptomic data. Methods are mainly based on the high-dimensional Gaussian linear regression model and we focus on this framework for this review. We propose a comparison study of variable selection procedures from regularization paths by considering three simulation settings. In the first one, the variables are independent allowing the evaluation of the methods in the theoretical framework used to develop them. In the second setting, two structures of the correlation between variables are considered to evaluate how biological dependencies usually observed affect the estimation. Finally, the th...
In the past several decades, the advent of high-throughput biotechnologies for genomics study provid...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
The selection of essential variables in logistic regression is vital because of its extensive use in...
Variable selection methods are powerful tools in analysis of high dimensional massive data. In bioin...
One of the most important and challenging ``knowledge extraction' tasks in bioinformatics is the rev...
In genetical genomics studies, it is important to jointly analyze gene expression data and genetic v...
<div><p>In genetical genomics studies, it is important to jointly analyze gene expression data and g...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
In the past several decades, the advent of high-throughput biotechnologies for genomics study provid...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
The selection of essential variables in logistic regression is vital because of its extensive use in...
Variable selection methods are powerful tools in analysis of high dimensional massive data. In bioin...
One of the most important and challenging ``knowledge extraction' tasks in bioinformatics is the rev...
In genetical genomics studies, it is important to jointly analyze gene expression data and genetic v...
<div><p>In genetical genomics studies, it is important to jointly analyze gene expression data and g...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
In the past several decades, the advent of high-throughput biotechnologies for genomics study provid...
In this thesis, we address the identification of biomarkers in high-dimensional omics data. The iden...
Modern applications of statistical approaches involve high-dimensional complex data, where variable ...