Motivation: With the growth of big data, variable selection has become one of the critical challenges in statistics. Although many methods have been proposed in the literature, their performance in terms of recall (sensitivity) and precision (predictive positive value) is limited in a context where the number of variables by far exceeds the number of observations or in a highly correlated setting. Results: In this article, we propose a general algorithm, which improves the precision of any existing variable selection method. This algorithm is based on highly intensive simulations and takes into account the correlation structure of the data. Our algorithm can either produce a confidence index for variable selection or be used in an experimen...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
<p>100 simulations were used to plot and evaluate the predictive performance of the six variable sel...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
A new version of the False Selection Rate variable selection method of Wu, Boos, and Stefanski (2007...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
Abstract Background Variable selection is frequently carried out during the analysis of many types o...
Background: Variable selection is frequently carried out during the analysis of m...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
Accurate prediction of complex traits based on whole-genome data is a computational prob-lem of para...
The selection of essential variables in logistic regression is vital because of its extensive use in...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The traditional variable selection problem has attracted renewed attention from statistical research...
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...
Large datasets including an extensive number of covariates are generated these days in many differen...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
<p>100 simulations were used to plot and evaluate the predictive performance of the six variable sel...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
A new version of the False Selection Rate variable selection method of Wu, Boos, and Stefanski (2007...
We introduce a new approach to variable selection, called Predictive Correlation Screening, for pred...
Abstract Background Variable selection is frequently carried out during the analysis of many types o...
Background: Variable selection is frequently carried out during the analysis of m...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
Accurate prediction of complex traits based on whole-genome data is a computational prob-lem of para...
The selection of essential variables in logistic regression is vital because of its extensive use in...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The traditional variable selection problem has attracted renewed attention from statistical research...
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...
Large datasets including an extensive number of covariates are generated these days in many differen...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...
<p>100 simulations were used to plot and evaluate the predictive performance of the six variable sel...
15 pages, 5 tablesVariable selection methods are widely used in molecular biology to detect biomarke...