Improving Longevity and Mortality Risk Models with Common Stochastic Long-Run Trends

37 Pages Posted: 3 Nov 2010 Last revised: 12 Apr 2011

See all articles by Michael Sherris

Michael Sherris

UNSW Business School

Severine Arnold (-Gaille)

University of Lausanne - Faculty of Business and Economics

Date Written: November 17, 2010

Abstract

Modeling mortality and longevity risk presents challenges because of the impact of improvements at different ages and the existence of common trends. Modeling cause of death mortality rates is even more challenging since trends and age effects are more diverse. Despite this, successfully modeling these mortality rates is critical to assessing risk for insurers issuing longevity risk products including life annuities. Longevity trends are often forecasted using a Lee-Carter model. A common stochastic trend determines age-based improvements. Other approaches fit an age-based parametric model with a time series or vector autoregression for the parameters. Vector Error Correction Models (VECM), developed recently in econometrics, include common stochastic long-run trends. This paper uses a stochastic parameter VECM form of the Heligman-Pollard model for mortality rates, estimated using data for circulatory disease deaths in the United States over a period of 50 years. The model is then compared with a version of the Lee-Carter model and a stochastic parameter ARIMA Heligman-Pollard model. The VECM approach proves to be an improvement over the Lee-Carter and ARIMA models as it includes common stochastic long-run trends.

Keywords: Mortality Trends, Heligman-Pollard Model, Lee-Carter Model, VAR, VECM

JEL Classification: C52, C32, J11, N30, G22, G23

Suggested Citation

Sherris, Michael and Arnold (-Gaille), Severine, Improving Longevity and Mortality Risk Models with Common Stochastic Long-Run Trends (November 17, 2010). UNSW Australian School of Business Research Paper No. 2010ACTL13, Available at SSRN: https://ssrn.com/abstract=1702029 or http://dx.doi.org/10.2139/ssrn.1702029

Michael Sherris (Contact Author)

UNSW Business School ( email )

Sydney, NSW 2052
Australia

Severine Arnold (-Gaille)

University of Lausanne - Faculty of Business and Economics ( email )

University of Lausanne
DSA
Lausanne, Vaud 1015
Switzerland
+41 21 692 33 72 (Phone)

HOME PAGE: http://www.hec.unil.ch/people/sarnold