• Medientyp: E-Artikel
  • Titel: Parsimonious predictive mortality modeling by regularization and cross-validation with and without COVID-type effect
  • Beteiligte: Barigou, Karim [VerfasserIn]; Loisel, Stéphane [VerfasserIn]; Salhi, Yahia [VerfasserIn]
  • Erschienen: Basel: MDPI, 2021
  • Sprache: Englisch
  • DOI: https://doi.org/10.3390/risks9010005
  • ISSN: 2227-9091
  • Schlagwörter: mortality ; regularization ; forecasting ; elastic-net ; smoothing ; Poisson generalized linear model
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  • Beschreibung: Predicting the evolution of mortality rates plays a central role for life insurance and pension funds. Standard single population models typically suffer from two major drawbacks: on the one hand, they use a large number of parameters compared to the sample size and, on the other hand, model choice is still often based on in-sample criterion, such as the Bayes information criterion (BIC), and therefore not on the ability to predict. In this paper, we develop a model based on a decomposition of the mortality surface into a polynomial basis. Then, we show how regularization techniques and cross-validation can be used to obtain a parsimonious and coherent predictive model for mortality forecasting. We analyze how COVID-19-type effects can affect predictions in our approach and in the classical one. In particular, death rates forecasts tend to be more robust compared to models with a cohort effect, and the regularized model outperforms the so-called P-spline model in terms of prediction and stability.
  • Zugangsstatus: Freier Zugang
  • Rechte-/Nutzungshinweise: Namensnennung (CC BY)