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Multivariate Functional Time Series Forecasting: Application to Age-Specific Mortality Rates

机译:多元功能时间序列预测:应用于特定年龄的死亡率

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This study considers the forecasting of mortality rates in multiple populations. We propose a model that combines mortality forecasting and functional data analysis (FDA). Under the FDA framework, the mortality curve of each year is assumed to be a smooth function of age. As with most of the functional time series forecasting models, we rely on functional principal component analysis (FPCA) for dimension reduction and further choose a vector error correction model (VECM) to jointly forecast mortality rates in multiple populations. This model incorporates the merits of existing models in that it excludes some of the inherent randomness with the nonparametric smoothing from FDA, and also utilizes the correlation structures between the populations with the use of VECM in mortality models. A nonparametric bootstrap method is also introduced to construct interval forecasts. The usefulness of this model is demonstrated through a series of simulation studies and applications to the age-and sex-specific mortality rates in Switzerland and the Czech Republic. The point forecast errors of several forecasting methods are compared and interval scores are used to evaluate and compare the interval forecasts. Our model provides improved forecast accuracy in most cases.
机译:本研究考虑了多种人群的死亡率预测。我们提出了一个结合了死亡率预测和功能数据分析(FDA)的模型。在FDA框架下,假定每年的死亡率曲线是年龄的平滑函数。与大多数功能时间序列预测模型一样,我们依靠功能主成分分析(FPCA)进行维度缩减,并进一步选择矢量误差校正模型(VECM)来共同预测多个人群的死亡率。该模型结合了现有模型的优点,因为它排除了FDA非参数平滑化带来的某些固有随机性,并且在死亡率模型中利用VECM来利用人群之间的相关结构。还引入了非参数自举方法来构造间隔预测。通过对瑞士和捷克共和国的年龄和性别特定死亡率进行一系列模拟研究和应用,证明了该模型的有效性。比较了几种预测方法的点预测误差,并使用区间得分来评估和比较区间预测。在大多数情况下,我们的模型可提高预测的准确性。

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