We introduce a novel approach that integrates Composi tional Data Analysis (CoDA) with forecast reconciliation to improve mortality projections disaggregated by cause of death and demographic groups. By leveraging the hierarchical and grouped structures inherent in causes-of-death mortality data, our framework addresses key challenges in mortality forecasting, ensuring internal coherence across different lev els of aggregation while maintaining a high degree of predictive accuracy. Our empirical results on Italian cause-specific mortality data, extracted from the WHO Database, demonstrate that forecast reconciliation sig nificantly enhances the reliability of projections. Furthermore, the MinT approach consistently outperforms alternative methods, particularly for top-level mortality forecasts. Our study highlights the substantial ben efits of combining CoDA with forecast reconciliation, with broad impli cations for demographic research, public health planning, and actuarial assessments.

Hierarchical Forecasting of Italian Mortality Data with Gender and Cause of Death Reconciliation / Lanfiuti Baldi, Giacomo; Nigri, Andrea; Mattera, Raffaele; Lin Shang, Han. - (2025). (Intervento presentato al convegno SIS 2025 tenutosi a Genova).

Hierarchical Forecasting of Italian Mortality Data with Gender and Cause of Death Reconciliation

Giacomo Lanfiuti baldi;Andrea Nigri;Raffaele Mattera;
2025

Abstract

We introduce a novel approach that integrates Composi tional Data Analysis (CoDA) with forecast reconciliation to improve mortality projections disaggregated by cause of death and demographic groups. By leveraging the hierarchical and grouped structures inherent in causes-of-death mortality data, our framework addresses key challenges in mortality forecasting, ensuring internal coherence across different lev els of aggregation while maintaining a high degree of predictive accuracy. Our empirical results on Italian cause-specific mortality data, extracted from the WHO Database, demonstrate that forecast reconciliation sig nificantly enhances the reliability of projections. Furthermore, the MinT approach consistently outperforms alternative methods, particularly for top-level mortality forecasts. Our study highlights the substantial ben efits of combining CoDA with forecast reconciliation, with broad impli cations for demographic research, public health planning, and actuarial assessments.
2025
SIS 2025
Mortality Forecasting · Causes-of-Deaths · Reconciliation · Compositional Data Anlysis
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Hierarchical Forecasting of Italian Mortality Data with Gender and Cause of Death Reconciliation / Lanfiuti Baldi, Giacomo; Nigri, Andrea; Mattera, Raffaele; Lin Shang, Han. - (2025). (Intervento presentato al convegno SIS 2025 tenutosi a Genova).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1743798
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