Improving mortality forecasting using a hybrid of Lee–Carter and stacking ensemble model

Samuel Asante Gyamerah, Aaron Akyea Mensah, Clement Asare, Nelson Dzupire
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Abstract

Abstract Background Mortality forecasting is a critical component in various fields, including public health, insurance, and pension planning, where accurate predictions are essential for informed decision-making. This study introduces an innovative hybrid approach that combines the classical Lee–Carter model with advanced machine learning techniques, particularly the stack ensemble model, to enhance the accuracy and efficiency of mortality forecasts. Results Through an extensive analysis of mortality data from Ghana, the hybrid model’s performance is assessed, showcasing its superiority over individual base models. The proposed hybrid Lee–Carter model with a stack ensemble emerges as a powerful tool for mortality forecasting based on the performance metrics utilized. Additionally, the study highlights the impact of incorporating additional base models within the stack ensemble framework to enhance predictive performance. Conclusion Through this innovative approach, the study provides valuable insights into enhancing mortality prediction accuracy. By bridging classic mortality modeling with advanced machine learning, the hybrid model offers a powerful tool for policymakers, actuaries, and healthcare practitioners to inform decisions and plan for the future. The findings of this research pave the way for further advancements and improvements in mortality forecasting methodologies, thus contributing to the broader understanding and management of mortality risks in various sectors.
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利用Lee-Carter和叠加集合模型改进死亡率预测
死亡率预测是各个领域的重要组成部分,包括公共卫生、保险和养老金规划,其中准确的预测对知情决策至关重要。本研究引入了一种创新的混合方法,将经典的Lee-Carter模型与先进的机器学习技术(特别是堆栈集成模型)相结合,以提高死亡率预测的准确性和效率。结果通过对加纳死亡率数据的广泛分析,评估了混合模型的性能,展示了其优于单个基本模型的优势。本文提出的带有堆栈集成的混合Lee-Carter模型是基于所使用的性能指标进行死亡率预测的有力工具。此外,该研究还强调了在堆栈集成框架中加入额外的基本模型以提高预测性能的影响。结论通过这种创新的方法,为提高死亡率预测的准确性提供了有价值的见解。通过将经典的死亡率建模与先进的机器学习相结合,混合模型为政策制定者、精算师和医疗保健从业者提供了一个强大的工具,可以为未来的决策和计划提供信息。这项研究的结果为死亡率预测方法的进一步进步和改进铺平了道路,从而有助于更广泛地了解和管理各个部门的死亡率风险。
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