<p>Prediction precision is arguably the most relevant criterion of a model in practice and is often a sought after property. A common difficulty with covariates measured with errors is the impossibility of performing prediction evaluation on the data even if a model is completely given without any unknown parameters. We bypass this inherent difficulty by using special properties on moment relations in linear regression models with measurement errors. The end product is a model selection procedure that achieves the same optimality properties that are achieved in classical linear regression models without covariate measurement error. Asymptotically, the procedure selects the model with the minimum prediction error in general, and selects the ...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
© 2017 American Statistical Association. Prediction precision is arguably the most relevant criterio...
An important statistical application is the problem of determining an appropriate set of input varia...
This article focuses on variable selection for partially linear models when the covariates are measu...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
Measurement error data or errors-in-variable data have been collected in many studies. Natural crite...
Measurement error causes a bias towards zero when estimating a panel data linear regression model. T...
In model selection procedures in supervised learning, a model is usually chosen so that the expected...
In model selection procedures in supervised learning, a model is usually chosen so that the expected...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...
© 2017 American Statistical Association. Prediction precision is arguably the most relevant criterio...
An important statistical application is the problem of determining an appropriate set of input varia...
This article focuses on variable selection for partially linear models when the covariates are measu...
In practice, measurement error in the covariates is often encountered. Measurement error has several...
Measurement error data or errors-in-variable data have been collected in many studies. Natural crite...
Measurement error causes a bias towards zero when estimating a panel data linear regression model. T...
In model selection procedures in supervised learning, a model is usually chosen so that the expected...
In model selection procedures in supervised learning, a model is usually chosen so that the expected...
RePEc Working Paper Series: No. 03/2011This review surveys a number of common Model Selection Algori...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
We propose variable selection procedures based on penalized score functions derived for linear measu...
We propose variable selection procedures based on penalized score functions derived for linear measu...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
We consider model selection uncertainty in linear regression. We study theoretically and by simulati...