In many problems involving generalized linear models, the covariates are subject to measurement error. When the number of covariates p ex-ceeds the sample size n, regularized methods like the lasso or Dantzig selector are required. Several recent papers have studied methods which correct for measurement error in the lasso or Dantzig selector for linear models in the p> n setting. We study a correction for generalized linear models based on Rosenbaum and Tsybakov’s matrix uncertainty selector. By not requiring an estimate of the measurement error covariance matrix, this generalized matrix uncertainty selector has a great practical advan-tage in problems involving high-dimensional data. We further derive an alternative method based on the ...
We propose a robust rank-based estimation and variable selection in double generalized linear models...
Recently emerging large-scale biomedical data pose exciting opportunities for scientific discoveries...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In many practical applications, high-dimensional regression analyses have to take into account measu...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
New version of our work with additional numerical experiments.This article investigates uncertainty ...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
Penalized regression methods are important when the number p of covariates exceeds the number of sam...
With the advancement of technology in data collection, repeated measurements with high dimensional c...
Constructing confidence intervals in high-dimensional models is a challenging task due to the lack o...
We propose a robust rank-based estimation and variable selection in double generalized linear models...
Recently emerging large-scale biomedical data pose exciting opportunities for scientific discoveries...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In many practical applications, high-dimensional regression analyses have to take into account measu...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
New version of our work with additional numerical experiments.This article investigates uncertainty ...
Given n noisy samples with p dimensions, where n ≪ p, we show that the multi-step thresholding proce...
Penalized regression methods are important when the number p of covariates exceeds the number of sam...
With the advancement of technology in data collection, repeated measurements with high dimensional c...
Constructing confidence intervals in high-dimensional models is a challenging task due to the lack o...
We propose a robust rank-based estimation and variable selection in double generalized linear models...
Recently emerging large-scale biomedical data pose exciting opportunities for scientific discoveries...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...