Do different models induce changes in mortality indicators? That is a key question for extending the Lee-Carter model
Articolo
Data di Pubblicazione:
2021
Abstract:
The parametric model introduced by Lee and Carter in 1992 for modeling mortality rates in
the USA was a seminal development in forecasting life expectancies and has been widely used since
then. Different extensions of this model, using different hypotheses about the data, constraints on the
parameters, and appropriate methods have led to improvements in the model’s fit to historical data
and the model’s forecasting of the future. This paper’s main objective is to evaluate if differences
between models are reflected in different mortality indicators’ forecasts. To this end, nine sets of
indicator predictions were generated by crossing three models and three block-bootstrap samples
with each of size fifty. Later the predicted mortality indicators were compared using functional
ANOVA. Models and block bootstrap procedures are applied to Spanish mortality data. Results show
model, block-bootstrap, and interaction effects for all mortality indicators. Although it was not our
main objective, it is essential to point out that the sample effect should not be present since they must
be realizations of the same population, and therefore the procedure should lead to samples that do
not influence the results. Regarding significant model effect, it follows that, although the addition of
terms improves the adjustment of probabilities and translates into an effect on mortality indicators,
the model’s predictions must be checked in terms of their probabilities and the mortality indicators
of interest.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
Lee Carter models, block-bootstrap, functional ANOVA, forecasting, mortality indicators
Elenco autori:
Debón, Ana; Haberman, Steven; Montes, Francisco; Otranto, Edoardo
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