EnWe present a new way to model age-specific demographic variables with the example of age-specific mortality in the U.S., building on the Lee-Carter approach and extending it in several dimensions. We incorporate covariates and model their dynamics jointly with the latent variables underlying mortality of all age classes. Furthermore, in contrast to previous models, a similar development of adjacent age groups is assured allowing for consistent forecasts. We develop an appropriate Markov Chain Monte Carlo algorithm to estimate the parameters and the latent variables in an efficient one-step procedure. Via the Bayesian approach we are able to asses uncertainty intuitively by constructing error bands for the forecasts. We observe that in par...
Fundamental to the modeling of longevity risk is the specification of the assumptions used in demogr...
Background: Mortality can be forecast by means of parametric models, principal component methods, an...
Population mortality forecasts are widely used for allocating public health expenditures, setting re...
We present a new way to model age-specific demographic variables with the example of age-specific mo...
Demographic Forecasting introduces new statistical tools that can greatly improve forecasts of popul...
In this article, we develop a fully integrated and dynamic Bayesian approach to forecast populations...
Abstract Many mortality forecasting approaches extrapolate past trends. Their predictions of the fut...
We provide forecasts for mortality rates by using two different approaches. First we employ dynamic ...
We apply a generalized Bayesian age–period–cohort (APC) model to a data-set on lung cancer mortality...
Forecasts of mortality provide vital information about future populations, with implications for pen...
We apply a generalized Bayesian age-period-cohort (APC) model to a dataset on lung cancer mortality ...
The development of mortality models is important in order to reconstruct historical processes, under...
Forecasted mortality rates using mortality models proposed in the recent literature are sensitive to...
The ability to produce accurate mortality forecasts, accompanied by a set of representative uncertai...
This article aims to propose a new Bayesian methodology to forecast mortality rates of long-term car...
Fundamental to the modeling of longevity risk is the specification of the assumptions used in demogr...
Background: Mortality can be forecast by means of parametric models, principal component methods, an...
Population mortality forecasts are widely used for allocating public health expenditures, setting re...
We present a new way to model age-specific demographic variables with the example of age-specific mo...
Demographic Forecasting introduces new statistical tools that can greatly improve forecasts of popul...
In this article, we develop a fully integrated and dynamic Bayesian approach to forecast populations...
Abstract Many mortality forecasting approaches extrapolate past trends. Their predictions of the fut...
We provide forecasts for mortality rates by using two different approaches. First we employ dynamic ...
We apply a generalized Bayesian age–period–cohort (APC) model to a data-set on lung cancer mortality...
Forecasts of mortality provide vital information about future populations, with implications for pen...
We apply a generalized Bayesian age-period-cohort (APC) model to a dataset on lung cancer mortality ...
The development of mortality models is important in order to reconstruct historical processes, under...
Forecasted mortality rates using mortality models proposed in the recent literature are sensitive to...
The ability to produce accurate mortality forecasts, accompanied by a set of representative uncertai...
This article aims to propose a new Bayesian methodology to forecast mortality rates of long-term car...
Fundamental to the modeling of longevity risk is the specification of the assumptions used in demogr...
Background: Mortality can be forecast by means of parametric models, principal component methods, an...
Population mortality forecasts are widely used for allocating public health expenditures, setting re...