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Forecasting mortality rate improvements with a high-dimensional VAR

Guibert, Quentin; Lopez, Olivier; Piette, Pierrick (2019), Forecasting mortality rate improvements with a high-dimensional VAR, Insurance. Mathematics and Economics, 88, p. 255-272. 10.1016/j.insmatheco.2019.07.004

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Manuscript_Mortalite_Enet.pdf (1.038Mb)
Type
Article accepté pour publication ou publié
Date
2019
Nom de la revue
Insurance. Mathematics and Economics
Volume
88
Pages
255-272
Identifiant publication
10.1016/j.insmatheco.2019.07.004
Métadonnées
Afficher la notice complète
Auteur(s)
Guibert, Quentin cc
Laboratoire de Sciences Actuarielle et Financière [SAF]
CEntre de REcherches en MAthématiques de la DEcision [CEREMADE]
Lopez, Olivier cc

Piette, Pierrick cc
Laboratoire de Probabilités, Statistique et Modélisation [LPSM (UMR_8001)]
Résumé (EN)
Forecasting mortality rates is a problem which involves the analysis of high-dimensional time series. Most of usual mortality models propose to decompose the mortality rates into several latent factors to reduce this complexity. These approaches, in particular those using cohort factors, have a good fit, but they are less reliable for forecasting purposes. One of the major challenges is to determine the spatial–temporal dependence structure between mortality rates given a relatively moderate sample size. This paper proposes a large vector autoregressive (VAR) model fitted on the differences in the log-mortality rates, ensuring the existence of long-run relationships between mortality rate improvements. Our contribution is threefold. First, sparsity, when fitting the model, is ensured by using high-dimensional variable selection techniques without imposing arbitrary constraints on the dependence structure. The main interest is that the structure of the model is directly driven by the data, in contrast to the main factor-based mortality forecasting models. Hence, this approach is more versatile and would provide good forecasting performance for any considered population. Additionally, our estimation allows a one-step procedure, as we do not need to estimate hyper-parameters. The variance–covariance matrix of residuals is then estimated through a parametric form. Secondly, our approach can be used to detect nonintuitive age dependence in the data, beyond the cohort and the period effects which are implicitly captured by our model. Third, our approach can be extended to model the several populations in long run perspectives, without raising issue in the estimation process. Finally, in an out-of-sample forecasting study for mortality rates, we obtain rather good performances and more relevant forecasts compared to classical mortality models using the French, US and UK data. We also show that our results enlighten the so-called cohort and period effects for these populations.
Mots-clés
Mortality forecasting; High-dimensional time series; Vector autoregression; Elastic-net; Age-cohort effect
JEL
C18 - Methodological Issues: General
C32 - Time-Series Models; Dynamic Quantile Regressions; Dynamic Treatment Effect Models; Diffusion Processes; State Space Models
C52 - Model Evaluation, Validation, and Selection
C53 - Forecasting and Prediction Methods; Simulation Methods

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