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Cause-of-death mortality forecasting using adaptive penalized tensor decompositions
被引:4
|作者:
Zhang, Xuanming
[1
]
Huang, Fei
[2
,4
]
Hui, Francis K. C.
[1
]
Haberman, Steven
[3
]
机构:
[1] Australian Natl Univ, Res Sch Finance Actuarial Studies & Stat, Canberra, Australia
[2] UNSW Sydney, Sch Risk & Actuarial Studies, Sydney, Australia
[3] City Univ London, Fac Actuarial Sci & Insurance, Bayes Business Sch, London, England
[4] UNSW Sydney, Sch Risk & Actuarial Studies, UNSW Business Sch, Sydney, NSW 2052, Australia
来源:
基金:
澳大利亚研究理事会;
关键词:
Adaptive weights;
Causes of death;
Generalized lasso penalty;
Model selection;
Tensor decomposition;
MODELS;
LASSO;
TRENDS;
RATES;
D O I:
10.1016/j.insmatheco.2023.05.003
中图分类号:
F [经济];
学科分类号:
02 ;
摘要:
Cause-of-death mortality modeling and forecasting is an important topic in demography and actuarial science, as it can provide valuable insights into the risks and factors determining future mortality rates. In this paper, we propose a novel predictive approach for cause-of-death mortality forecasting, based on an adaptive penalized tensor decomposition (ADAPT). The new method jointly models the three dimensions (cause, age, and year) of the data, and uses adaptively weighted penalty matrices to overcome the computational burden of having to select a large number of tuning parameters when multiple factors are involved. ADAPT can be coupled with a variety of methods (e.g., linear extrapolation, and smoothing) for extrapolating the estimated year factors and hence for mortality forecasting. Based on an application to United States (US) male cause-of-death mortality data, we demonstrate that tensor decomposition methods such as ADAPT can offer strong out-of-sample predictive performance compared to several existing models, especially when it comes to mid-and long-term forecasting. (c) 2023 Elsevier B.V. All rights reserved.
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页码:193 / 213
页数:21
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