Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the variables are dummies for age, period, etc. shrinkage is more commonly applied to differences between adjacent parameters, perhaps by fitting cubic splines or piecewise-linear curves (linear splines) across the parameters. A common problem in mortality is modeling related populations where some commonality is desired. We do this by shrinking slope changes of linear splines for the largest population, then shrinking differences from those slope changes for the other populations. There are frequentist and Bayesian approaches to shrinkage, and they have a good deal of similarity. Here we use a unified approach that compromises a bit with both of ...
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative meth...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Parameter shrinkage applied optimally can always reduce error and projection variances from those of...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Statistical methods that shrink parameters towards zero can produce lower predictive variance than d...
Age-period-cohort models used in life and general insurance can be over-parameterized, and actuaries...
Age-period-cohort models used in life and general insurance can be overparameterized, and actuaries ...
The predictive value of a statistical model can often be improved by applying shrinkage methods. Thi...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
In this paper a variety of shrinkage methods for estimating unknown population parameters has been c...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
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...
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative meth...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
Contemporary statistical research frequently deals with problems involving a diverging number of par...
Parameter shrinkage applied optimally can always reduce error and projection variances from those of...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Statistical methods that shrink parameters towards zero can produce lower predictive variance than d...
Age-period-cohort models used in life and general insurance can be over-parameterized, and actuaries...
Age-period-cohort models used in life and general insurance can be overparameterized, and actuaries ...
The predictive value of a statistical model can often be improved by applying shrinkage methods. Thi...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
In this paper a variety of shrinkage methods for estimating unknown population parameters has been c...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
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...
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative meth...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
Contemporary statistical research frequently deals with problems involving a diverging number of par...