Abstract

Mortality shocks such as the one induced by the COVID-19 pandemic have substantial impact on mortality models. We describe how to deal with them in the period effect of the Lee-Carter model. The main idea is to not rely on the usual normal distribution assumption as it is not always justified. We consider a mixture distribution model based on the peaks-over-Threshold method, a jump model, and a regime switching model and introduce a modified calibration procedure to account for the fact that varying amounts of data are necessary for calibrating different parts of these models. We perform an extensive empirical study for nine European countries, comparing the models with respect to their parameters, quality of fit, and forecasting performance. Moreover, we define five exemplary scenarios regarding the future development of pandemic-related mortality. As a result of our evaluations, we recommend the peaks-over-Threshold approach for applications with a possibility of extreme mortality events.

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Cite as

Schnürch, S., Kleinow, T. & Wagner, A. 2023, 'Accounting for COVID-19-Type shocks in mortality modeling: A comparative study', Journal of Demographic Economics, 89(3), pp. 483-512. https://doi.org/10.1017/dem.2023.9

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Last updated: 18 September 2023
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