
In this paper we mirror the framework of generalized (non-)linear models to define the family of generalized age-period-cohort stochastic mortality models which encompasses the vast majority of stochastic mortality projection models proposed to date, including the well-known Lee-Carter and Cairns-Blake-Dowd models. We also introduce the R package StMoMo which exploits the unifying framework of the generalized age-period-cohort family to provide tools for fitting stochastic mortality models, assessing their goodness of fit and performing mortality projections. We illustrate some of the capabilities of the package by performing a comparison of several stochastic mortality models applied to the England and Wales population.
generalized nonlinear models, Statistics, mortality forecasting, age-period-cohort, HG, mortality modeling, HA1-4737, HG8779-8793, generalized non-linear models, HD61, generalised linear models, generalised non-linear models, HB848-3697, Mortality modelling
generalized nonlinear models, Statistics, mortality forecasting, age-period-cohort, HG, mortality modeling, HA1-4737, HG8779-8793, generalized non-linear models, HD61, generalised linear models, generalised non-linear models, HB848-3697, Mortality modelling
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