Modelling and forecasting homogeneous age-specific mortality rates of multiple countries could lead to improvements in long-term forecasting. Data fed into joint models are often grouped according to nominal attributes, such as geographic regions, ethnic groups, and socioeconomic status, which may still contain heterogeneity and deteriorate the forecast results. Our paper proposes a novel clustering technique to pursue homogeneity among multiple functional time series based on functional panel data modelling to address this issue. Using a functional panel data model with fixed effects, we can extract common functional time series features. These common features could be decomposed into two components: the functional time trend and the mode of variations of functions (functional pattern). The functional time trend reflects the dynamics across time, while the functional pattern captures the fluctuations within curves. The proposed clustering method searches for homogeneous age-specific mortality rates of multiple countries by accounting for both the modes of variations and the temporal dynamics among curves. We demonstrate that the proposed clustering technique outperforms other existing methods through a Monte Carlo simulation and could handle complicated cases with slow decaying eigenvalues. In empirical data analysis, we find that the clustering results of age-specific mortality rates can be explained by the combination of geographic region, ethnic groups, and socioeconomic status. We further show that our model produces more accurate forecasts than several benchmark methods in forecasting age-specific mortality rates.
翻译:纳入联合模型的数据往往按地理区域、族裔群体和社会经济地位等名义属性分类,这些属性可能仍然含有异质性,并使预测结果恶化。我们的文件建议采用新型集群技术,在功能小组数据模型的基础上,在多种功能时间序列中追求同质性,以解决这一问题。我们使用功能小组数据模型,可以得出具有固定效果的通用功能时间序列特征。这些共同特征可以分解为两个部分:功能时间趋势和功能变化模式(功能模式),功能时间趋势反映时间动态,功能模式反映时间动态,功能模式反映曲线内的波动。拟议组合方法通过计算变异模式和曲线之间的时间动态,对多个国家的同质性特定年龄死亡率进行搜索。我们证明,拟议的组合技术通过蒙特卡洛模拟,超越了其他现有方法,并可以处理易腐蚀性值缓慢的复杂案例。在实证数据分析中,我们发现,功能时间趋势反映了时间动态动态,而功能模式则反映曲线内的波动情况。拟议组合方法通过不同地理区域的组合,可以进一步说明我们不同地理区域的准确死亡率。