Parameter shrinkage applied optimally can always reduce error and projection variances from those of maximum likelihood estimation. Many variables that actuaries use are on numerical scales, like age or year, which require parameters at each point. Rather than shrinking these towards zero, nearby parameters are better shrunk towards each other. Semiparametric regression is a statistical discipline for building curves across parameter classes using shrinkage methodology. It is similar to but more parsimonious than cubic splines. We introduce it in the context of Bayesian shrinkage and apply it to joint mortality modeling for related populations, with Swedish and Danish mortality as an illustration. Bayesian shrinkage of slope changes of line...
In this paper a variety of shrinkage methods for estimating unknown population parameters has been c...
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the n...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Age-period-cohort models used in life and general insurance can be overparameterized, and actuaries ...
Age-period-cohort models used in life and general insurance can be over-parameterized, and actuaries...
Statistical methods that shrink parameters towards zero can produce lower predictive variance than d...
The predictive value of a statistical model can often be improved by applying shrinkage methods. Thi...
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative meth...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Life insurers, pension funds, health care providers and social security institutions face increasing...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
In this paper a variety of shrinkage methods for estimating unknown population parameters has been c...
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the n...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...
Parameter shrinkage is known to reduce fitting and prediction errors in linear models. When the vari...
Actuaries use age-period-cohort (APC) models for mortality modeling and general insurance loss reser...
Age-period-cohort models used in life and general insurance can be overparameterized, and actuaries ...
Age-period-cohort models used in life and general insurance can be over-parameterized, and actuaries...
Statistical methods that shrink parameters towards zero can produce lower predictive variance than d...
The predictive value of a statistical model can often be improved by applying shrinkage methods. Thi...
Maximum likelihood estimation has been the workhorse of statistics for decades, but alternative meth...
Logistic regression analysis may well be used to develop a predictive model for a dichotomous medica...
During recent years, penalized likelihood approaches have attracted a lot of interest both in the ar...
Life insurers, pension funds, health care providers and social security institutions face increasing...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Opioid mortality rates have been increasing sharply, but not uniformly by age. Peak ages have recent...
In this paper a variety of shrinkage methods for estimating unknown population parameters has been c...
In all areas of human knowledge, datasets are increasing in both size and complexity, creating the n...
In this thesis, shrinkage and variable selection is used on one of the most famous models in surviva...