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An alternative procedure to obtain the mortality rate with non-linear functions: Application to the case of the Spanish population


Autoři: Marcos Postigo-Boix aff001;  Ramón Agüero aff002;  José L. Melús-Moreno aff001
Působiště autorů: Department of Network Engineering, Universitat Politècnica de Catalunya, Barcelona, Spain aff001;  Communications Engineering Department, University of Cantabria, Santander, Spain aff002
Vyšlo v časopise: PLoS ONE 14(10)
Kategorie: Research Article
prolekare.web.journal.doi_sk: https://doi.org/10.1371/journal.pone.0223789

Souhrn

This paper presents an alternative calculation procedure to calculate the mortality rate, exploiting the data available in the Eurostat demography database for Spain. This methodology has been devised based on two of the most widely known and widespread models to establish the mortality rate: The Gompertz-Makeham (GM) and Lee-Carter (LC) models. Our main goal is to obtain a model yielding a similar accuracy than LC or GM, but able to capture the variation of their parameters over time and ages. The method proposed herewith works by applying simple or double fitting, with non-linear functions, to the values of the parameters considered by each one of such models. One of the main advantages of our approach is that we considerably reduce the amount of data that is required to establish the mortality rate, with respect to what would be needed if the traditional models were used. On the other hand, it also allows analyzing the evolution of the mortality rate, even if no real data was available for a particular year. The results evince that, besides fulfilling the two aforementioned goals, the proposed scheme yields an estimation error that is comparable with that offered by the traditional approach.

Klíčová slova:

Death rates – Statistical data – Curve fitting – Social networks – Polynomials – Insurance – Spain – Approximation methods


Zdroje

1. Eurostat. Database-Eurostat [Internet]. 2019 [cited 2019 Apr 29]. Available from: https://ec.europa.eu/eurostat/web/population-demography-migration-projections/data/database

2. Gompertz B. On the Nature of the Function Expressive of the Law of Human Mortality, and on a New Mode of Determining the Value of Life Contingencies. Philos Trans R Soc London. 1825;115:513–83.

3. Makeham WM. On the Law of Mortality and Construction of Annuity Tables. Assur Mag J Inst Actuar. 2016;8(06):301–10.

4. Lee RD, Carter LR. Modeling and forecasting U.S. mortality. J Am Stat Assoc. 1992;87(419):659–71.

5. Lee R. The lee-carter method for forecasting mortality, with various extensions and applications. North Am Actuar J. 2000;4(1):80–91.

6. Lee R, Miller T. Evaluating the Performance of the Lee-Carter Method for Forecasting Mortality. Demography. 2007;38(4):537.

7. Li N, Lee R, Tuljapurkar S. Using the Lee-Carter Method to Forecast Mortality for Populations with Limited Data*. Int Stat Rev. 2010;72(1):19–36.

8. Renshaw AE, Haberman S. Lee-Carter mortality forecasting with age-specific enhancement. Insur Math Econ. 2003;33(2):255–72.

9. Renshaw A, Haberman S. Lee-carter mortality forecasting: A parallel generalized linear modelling approach for England and Wales mortality projections. J R Stat Soc Ser C Appl Stat. 2003;52(1):119–37.

10. Renshaw AE, Haberman S. On the forecasting of mortality reduction factors. Lung Cancer. 2006;54(1):379–401.

11. Renshaw AE, Haberman S. A cohort-based extension to the Lee-Carter model for mortality reduction factors. Insur Math Econ. 2006;

12. Booth H, Hyndman RJ, Tickle L, de Jong P. Lee-Carter mortality forecasting: a multi-country comparison of variants and extensions. Demogr Res. 2006;15:289–310.

13. de Jong P, Tickle L. Extending Lee-Carter mortality forecasting. Math Popul Stud. 2006;13(1):1–18.

14. Cohen JE, Bohk-Ewald C, Rau R. Gompertz, Makeham, and Siler models explain Taylor’s law in human mortality data. Demogr Res. 2018;38(1):773–841.

15. Missov TI, Lenart A. Gompertz-Makeham life expectancies: Expressions and applications. Theor Popul Biol. 2013;90:29–35. doi: 10.1016/j.tpb.2013.09.013 24084064

16. Missov TI, Lenart A, Nemeth L, Canudas-Romo V, Vaupel JW. The gompertz force of mortality in terms of the modal age at death. Demogr Res. 2015;32(1):1031–48.

17. Teimouri M, Gupta AK. Estimation methods for the gompertz-makeham distribution under progressively type-I interval censoring scheme. Natl Acad Sci Lett [Internet]. 2012 Jun 14 [cited 2019 Apr 30];35(3):227–35. Available from: http://link.springer.com/10.1007/s40009-012-0048-4

18. Wilmoth J, Zureick S, Canudas-Romo V, Inoue M, Sawyer C. A flexible two-dimensional mortality model for use in indirect estimation. Popul Stud (NY) [Internet]. 2012 Mar [cited 2019 Sep 6];66(1):1–28. Available from: http://www.tandfonline.com/doi/abs/10.1080/00324728.2011.611411

19. Clark SJ. A Singular Value Decomposition-based Factorization and Parsimonious Component Model of Demographic Quantities Correlated by Age: Predicting Complete Demographic Age Schedules with Few Parameters. 2015 Apr 8 [cited 2019 Sep 6]; Available from: http://arxiv.org/abs/1504.02057

20. Booth H, Tickle L. Mortality Modelling and Forecasting: a Review of Methods. Ann Actuar Sci [Internet]. 2008 Sep 10 [cited 2019 Apr 30];3(1–2):3–43. Available from: http://www.journals.cambridge.org/abstract_S1748499500000440

21. Booth H. Demographic forecasting: 1980 to 2005 in review. Vol. 22, International Journal of Forecasting. 2006. p. 547–81.

22. Pitacco E. Survival models in a dynamic context: A survey. Insur Math Econ. 2004;35(2 SPEC. ISS.):279–98.

23. Wong-Fupuy C, Haberman S. Projecting Mortality Trends: Recent Developments in the United Kingdom and the United States. North Am Actuar J. 2004;8(2):56–83.

24. Keyfitz N. Choice of function for mortality analysis: Effective forecasting depends on a minimum parameter representation. Theor Popul Biol. 1982;21(3):329–52.

25. Pollard J. Projection of age-specific mortality rates. Popul Bull UN [Internet]. 1987 [cited 2019 Apr 30];(21/22):55–69. Available from: https://www.popline.org/node/354200

26. Murphy M. Methods of forecasting mortality for population projections. In: OPCS Population projections: trends, methods and uses. London; 1990. p. 87–102.

27. Tuljapurkar S, Boe C. Mortality change and forecasting: How much and how little do we know? North Am Actuar J. 1998;

28. Alho J, Spencer BD. Statistical demography and forecasting. Springer-Verlag New York; 2005. 410 p.

29. Heligman L, Pollard JH. The age pattern of mortality. J Inst Actuar. 2012;107(01):49–80.

30. MATLAB and Curve Fitting Toolbox. Natick, Massachusetts, United States: The Mathworks Inc; 2018.

31. Willmott CJ, Matsuura K. Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Clim Res. 2005;30(1):79–82.


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