We propose variable selection procedures based on penalized score functions derived for linear measurement error models. To calibrate the selection procedures, we define new tuning parameter selectors based on the scores. Large-sample properties of these new tuning parameter selectors are established for the proposed procedures. These new methods are compared in simulations and a real-data application with competing methods where one ignores measurement error or uses the Bayesian information criterion to choose the tuning parameter. © 2013
In practice, measurement error in the covariates is often encountered. Measurement error has several...
The penalized least squares approach with smoothly clipped absolute deviation penalty has been consi...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
We propose variable selection procedures based on penalized score functions derived for linear measu...
Compared with ordinary regression models, the computational cost for estimating parame-ters in gener...
Measurement error data or errors-in-variable data have been collected in many studies. Natural crite...
This article focuses on variable selection for partially linear models when the covariates are measu...
Penalized regression models are popularly used in high-dimensional data analysis to conduct vari-abl...
The tuning parameter selection strategy for penalized estimation is crucial to identify a model that...
AbstractThis paper focuses on the variable selections for semiparametric varying coefficient partial...
© 2017 American Statistical Association. Prediction precision is arguably the most relevant criterio...
There is an emerging need to advance linear mixed model technology to include variable selection met...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
Statistical models whose independent variables are subject to measurement errors are often referred ...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
The penalized least squares approach with smoothly clipped absolute deviation penalty has been consi...
Variable selection has been studied using different approaches. Its growing importance lies in numer...
We propose variable selection procedures based on penalized score functions derived for linear measu...
Compared with ordinary regression models, the computational cost for estimating parame-ters in gener...
Measurement error data or errors-in-variable data have been collected in many studies. Natural crite...
This article focuses on variable selection for partially linear models when the covariates are measu...
Penalized regression models are popularly used in high-dimensional data analysis to conduct vari-abl...
The tuning parameter selection strategy for penalized estimation is crucial to identify a model that...
AbstractThis paper focuses on the variable selections for semiparametric varying coefficient partial...
© 2017 American Statistical Association. Prediction precision is arguably the most relevant criterio...
There is an emerging need to advance linear mixed model technology to include variable selection met...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
Statistical models whose independent variables are subject to measurement errors are often referred ...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
The penalized least squares approach with smoothly clipped absolute deviation penalty has been consi...
Variable selection has been studied using different approaches. Its growing importance lies in numer...