MOTIVATION: In some prediction analyses, predictors have a natural grouping structure and selecting predictors accounting for this additional information could be more effective for predicting the outcome accurately. Moreover, in a high dimension low sample size framework, obtaining a good predictive model becomes very challenging. The objective of this work was to investigate the benefits of dimension reduction in penalized regression methods, in terms of prediction performance and variable selection consistency, in high dimension low sample size data. Using two real datasets, we compared the performances of lasso, elastic net, group lasso, sparse group lasso, sparse partial least squares (PLS), group PLS and sparse group PLS. RESULTS: Con...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
In personalized medicine, biomarkers are used to select therapies with the highest likelihood of suc...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
International audienceBACKGROUND: The standard lasso penalty and its extensions are commonly used to...
Background The standard lasso penalty and its extensions are commonly used to develo...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
With the advent of high-throughput biological data in the past twenty years there has been significa...
Covariate selection is a fundamental step when building sparse prediction models in order to avoid o...
Penalized likelihood approaches are widely used for high-dimensional regression. Although many metho...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
In personalized medicine, biomarkers are used to select therapies with the highest likelihood of suc...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
Continuous variable selection using shrinkage procedures have recently been considered as favorable ...
International audienceBACKGROUND: The standard lasso penalty and its extensions are commonly used to...
Background The standard lasso penalty and its extensions are commonly used to develo...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
The main goal of this Thesis is to describe numerous statistical techniques that deal with high-dime...
With the advent of high-throughput biological data in the past twenty years there has been significa...
Covariate selection is a fundamental step when building sparse prediction models in order to avoid o...
Penalized likelihood approaches are widely used for high-dimensional regression. Although many metho...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
In a wide range of applications, datasets are generated for which the number of variables p exceeds ...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
In personalized medicine, biomarkers are used to select therapies with the highest likelihood of suc...