The Dantzig selector performs variable selection and model fitting in linear regression. It uses an L1 penalty to shrink the regression coefficients towards zero, in a similar fashion to the lasso. While both the lasso and Dantzig selector potentially do a good job of selecting the correct variables, they tend to overshrink the final coefficients. This results in an unfortunate trade-off. One can either select a high shrinkage tuning parameter that produces an accurate model but poor coefficient estimates or a low shrinkage parameter that produces more accurate coefficients but includes many irrelevant variables. We extend the Dantzig selector to fit generalized linear models while eliminating overshrinkage of the coefficient estimates, and...
The abundance of available digital big data has created new challenges in identifying relevant varia...
We propose a new method to select the tuning parameter in lasso regression. Unlike the previous prop...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
The Dantzig selector performs variable selection and model fitting in linear regression. It uses an ...
The Lasso is a popular and computationally efficient procedure for automatically performing both var...
The Dantzig selector was recently proposed to perform variable selection and model fitting in the li...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
The Dantzig variable selector has recently emerged as a powerful tool for fitting regularized regres...
The varying coefficient model is a useful extension of the linear regression model. Nevertheless, ho...
We propose a Generalized Dantzig Selector (GDS) for linear models, in which any norm encoding the pa...
We propose a shrinkage procedure for simultaneous variable selection and estimation in generalized l...
The "least absolute shrinkage and selection operator" ('lasso') has been widely used in regression s...
International audienceThe Dantzig selector (DS) is a recent approach of estimation in high-dimension...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
The abundance of available digital big data has created new challenges in identifying relevant varia...
We propose a new method to select the tuning parameter in lasso regression. Unlike the previous prop...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
The Dantzig selector performs variable selection and model fitting in linear regression. It uses an ...
The Lasso is a popular and computationally efficient procedure for automatically performing both var...
The Dantzig selector was recently proposed to perform variable selection and model fitting in the li...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
The Dantzig variable selector has recently emerged as a powerful tool for fitting regularized regres...
The varying coefficient model is a useful extension of the linear regression model. Nevertheless, ho...
We propose a Generalized Dantzig Selector (GDS) for linear models, in which any norm encoding the pa...
We propose a shrinkage procedure for simultaneous variable selection and estimation in generalized l...
The "least absolute shrinkage and selection operator" ('lasso') has been widely used in regression s...
International audienceThe Dantzig selector (DS) is a recent approach of estimation in high-dimension...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
The abundance of available digital big data has created new challenges in identifying relevant varia...
We propose a new method to select the tuning parameter in lasso regression. Unlike the previous prop...
In many problems involving generalized linear models, the covariates are subject to measurement erro...