Author
Listed:
- Tanaka, Sohei
- Matsuyama, Naoki
Abstract
Cause-of-death mortality forecasting, a key topic in public health and actuarial science, is a challenging task due to the difficulty of modeling that accounts for dependencies among causes of death. While several cause-of-death mortality models have been proposed to address this difficulty, little attention has been paid to improving their predictive performance. Recently, purely data-driven approaches using tensor decomposition methods have been introduced to cause-of-death mortality modeling, demonstrating strong out-of-sample predictive performance compared to existing models. However, these methods have difficulties in the interpretability of multi-rank tensor components to achieve strong predictive performance. In response, we propose a novel tensor-based cause-of-death mortality model by replacing the tensor decomposition with a convolutional autoencoder with a one-dimensional latent layer that provides a Lee-Carter-like time-series factor; the model also provides the age sensitivity of cause-specific log mortality to the time-series factor. Due to the representational capability of the neural network, our model achieves better predictive performance compared to the existing tensor decomposition-based models, despite the simplified latent layer for model interpretability.
Suggested Citation
Tanaka, Sohei & Matsuyama, Naoki, 2025.
"An interpretable neural network approach to cause-of-death mortality forecasting,"
Annals of Actuarial Science, Cambridge University Press, vol. 19(3), pages 442-461, November.
Handle:
RePEc:cup:anacsi:v:19:y:2025:i:3:p:442-461_4
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