Forecasting Causes of Death using Compositional Data Analysis: the Case of Cancer Deaths

Søren Kjærgaard, Yunus Emre Ergemen, Malene Kallestrup-Lamb, James Oeppen, Rune Lindahl-Jacobsen

Research output: Contribution to conference without publisher/journalConference abstract for conferenceResearchpeer-review

Abstract

Cause specific mortality forecasting is often based on predicting cause specific death rates independently. Only a few methods have been suggested that incorporate dependence among causes. An attractive alternative is to model and forecast cause specific death distributions, rather than mortality rates, as dependence among the causes can be incorporated directly. We follow this idea and propose two new models which extend the current research on mortality forecasting using death distributions. We find that adding age, time, and cause specific weights and decomposing both joint and individual variation among different causes of death increased the forecast accuracy of cancer deaths using data for French and Dutch populations.
Original languageEnglish
Publication date20. Sept 2018
Publication statusPublished - 20. Sept 2018
EventFourteenth International Longevity Risk and Capital Markets Solutions Conference - Park Inn by Radisson Amsterdam City West, Amsterdam , Netherlands
Duration: 20. Sept 201821. Sept 2018
https://www.cass.city.ac.uk/faculties-and-research/centres/pensions-institute/events/longevity-14

Conference

ConferenceFourteenth International Longevity Risk and Capital Markets Solutions Conference
LocationPark Inn by Radisson Amsterdam City West
Country/TerritoryNetherlands
CityAmsterdam
Period20/09/201821/09/2018
Internet address

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