The predictive value of a statistical model can often be improved by applying shrinkage methods. This can be achieved, e.g., by regularized regression or empirical Bayes approaches. Various types of shrinkage factors can also be estimated after a maximum likelihood fit has been obtained: while global shrinkage modifies all regression coefficients by the same factor, parameterwise shrinkage factors differ between regression coefficients. The latter ones have been proposed especially in the context of variable selection. With variables which are either highly correlated or associated with regard to contents, such as dummy variables coding a categorical variable, or several parameters describing a nonlinear effect, parameterwise shrinkage fact...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
[[abstract]]Estimation of regression coefficients in a linear regression model is essential not only...
Description Post-estimation shrinkage of regression coefficients in statistical modeling can be used...
Regression analysis is a commonly used approach to modelling the relationships between dependent and...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Includes bibliographical references.Shrinkage estimation is an increasingly popular class of biased ...
The dimension of the parameter space is typically unknown in a variety of models that rely on factor...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
[[abstract]]Estimation of regression coefficients in a linear regression model is essential not only...
Description Post-estimation shrinkage of regression coefficients in statistical modeling can be used...
Regression analysis is a commonly used approach to modelling the relationships between dependent and...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
When developing risk prediction models on datasets with limited sample size, shrinkage methods are r...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Includes bibliographical references.Shrinkage estimation is an increasingly popular class of biased ...
The dimension of the parameter space is typically unknown in a variety of models that rely on factor...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
International audienceBiased regression is an alternative to ordinary least squares (OLS) regression...
[[abstract]]Estimation of regression coefficients in a linear regression model is essential not only...