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Hauptverfasser: Dong, Zhe Michelle, Shang, Han Lin, Hui, Francis, Bruhn, Aaron
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2510.16244
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author Dong, Zhe Michelle
Shang, Han Lin
Hui, Francis
Bruhn, Aaron
author_facet Dong, Zhe Michelle
Shang, Han Lin
Hui, Francis
Bruhn, Aaron
contents Understanding and forecasting mortality by cause is an essential branch of actuarial science, with wide-ranging implications for decision-makers in public policy and industry. To accurately capture trends in cause-specific mortality, it is critical to consider dependencies between causes of death and produce forecasts by age and cause coherent with aggregate mortality forecasts. One way to achieve these aims is to model cause-specific deaths using compositional data analysis (CODA), treating the density of deaths by age and cause as a set of dependent, non-negative values that sum to one. A major drawback of standard CODA methods is the challenge of zero values, which frequently occur in cause-of-death mortality modelling. Thus, we propose using a compositional power transformation, the $α$-transformation, to model cause-specific life-table death counts. The $α$-transformation offers a statistically rigorous approach to handling zero value subgroups in CODA compared to \emph{ad-hoc} techniques: adding an arbitrarily small amount. We illustrate the $α$-transformation on England and Wales, and US death counts by cause from the Human Cause-of-Death database, for cardiovascular-related causes of death. Results demonstrate the $α$-transformation improves forecast accuracy of cause-specific life-table death counts compared with log-ratio-based CODA transformations. The forecasts suggest declines in proportions of deaths from major cardiovascular causes (myocardial infarction and other ischemic heart diseases (IHD)).
format Preprint
id arxiv_https___arxiv_org_abs_2510_16244
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Compositional Approach to Modelling Cause-specific Mortality with Zero Counts
Dong, Zhe Michelle
Shang, Han Lin
Hui, Francis
Bruhn, Aaron
Applications
62R10, 91D20
Understanding and forecasting mortality by cause is an essential branch of actuarial science, with wide-ranging implications for decision-makers in public policy and industry. To accurately capture trends in cause-specific mortality, it is critical to consider dependencies between causes of death and produce forecasts by age and cause coherent with aggregate mortality forecasts. One way to achieve these aims is to model cause-specific deaths using compositional data analysis (CODA), treating the density of deaths by age and cause as a set of dependent, non-negative values that sum to one. A major drawback of standard CODA methods is the challenge of zero values, which frequently occur in cause-of-death mortality modelling. Thus, we propose using a compositional power transformation, the $α$-transformation, to model cause-specific life-table death counts. The $α$-transformation offers a statistically rigorous approach to handling zero value subgroups in CODA compared to \emph{ad-hoc} techniques: adding an arbitrarily small amount. We illustrate the $α$-transformation on England and Wales, and US death counts by cause from the Human Cause-of-Death database, for cardiovascular-related causes of death. Results demonstrate the $α$-transformation improves forecast accuracy of cause-specific life-table death counts compared with log-ratio-based CODA transformations. The forecasts suggest declines in proportions of deaths from major cardiovascular causes (myocardial infarction and other ischemic heart diseases (IHD)).
title A Compositional Approach to Modelling Cause-specific Mortality with Zero Counts
topic Applications
62R10, 91D20
url https://arxiv.org/abs/2510.16244