Abstract: The performance of the Lasso is well understood under the assumptions of the standard linear model with homoscedastic noise. However, in several appli-cations, the standard model does not describe the important features of the data. This paper examines how the Lasso performs on a non-standard model that is mo-tivated by medical imaging applications. In these applications, the variance of the noise scales linearly with the expectation of the observation. Like all heteroscedas-tic models, the noise terms in this Poisson-like model are not independent of the design matrix. More specifically, this paper studies the sign consistency of the Lasso under a sparse Poisson-like model. In addition to studying sufficient conditions for the si...
We consider the problem of estimating an unknown signal x0 from noisy linear observations y = Ax0 + ...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
In this paper we study the asymptotic properties of the adaptive Lasso estimate in high dimensional ...
The performance of the Lasso is well understood under the assumptions of the standard sparse linear ...
In regression settings where explanatory variables have very low correlations and where there are re...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
The desparsified lasso is a high-dimensional estimation method which provides uniformly valid infere...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
In randomized experiments, linear regression is often used to adjust for imbalances in covariates be...
International audienceSparse linear inverse problems appear in a variety of settings, but often the ...
The Lasso shrinkage procedure achieved its popularity, in part, by its tendency to shrink estimated ...
We study the degrees of freedom of the Lasso in the framework of Stein's unbiased risk estimati...
International audienceIn high dimension, it is customary to consider Lasso-type estimators to enforc...
In this paper, we investigate the degrees of freedom ($\dof$) of penalized $\ell_1$ minimization (al...
A classical problem that arises in numerous signal processing applications asks for the reconstructi...
We consider the problem of estimating an unknown signal x0 from noisy linear observations y = Ax0 + ...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
In this paper we study the asymptotic properties of the adaptive Lasso estimate in high dimensional ...
The performance of the Lasso is well understood under the assumptions of the standard sparse linear ...
In regression settings where explanatory variables have very low correlations and where there are re...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
The desparsified lasso is a high-dimensional estimation method which provides uniformly valid infere...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
In randomized experiments, linear regression is often used to adjust for imbalances in covariates be...
International audienceSparse linear inverse problems appear in a variety of settings, but often the ...
The Lasso shrinkage procedure achieved its popularity, in part, by its tendency to shrink estimated ...
We study the degrees of freedom of the Lasso in the framework of Stein's unbiased risk estimati...
International audienceIn high dimension, it is customary to consider Lasso-type estimators to enforc...
In this paper, we investigate the degrees of freedom ($\dof$) of penalized $\ell_1$ minimization (al...
A classical problem that arises in numerous signal processing applications asks for the reconstructi...
We consider the problem of estimating an unknown signal x0 from noisy linear observations y = Ax0 + ...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
In this paper we study the asymptotic properties of the adaptive Lasso estimate in high dimensional ...