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Synergy in fertility forecasting: improving forecast accuracy through model averaging

机译:肥沃预测的协同作用:通过模型平均提高预测精度

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Abstract Accuracy in fertility forecasting has proved challenging and warrants renewed attention. One way to improve accuracy is to combine the strengths of a set of existing models through model averaging. The model-averaged forecast is derived using empirical model weights that optimise forecast accuracy at each forecast horizon based on historical data. We apply model averaging to fertility forecasting for the first time, using data for 17 countries and six models. Four model-averaging methods are compared: frequentist, Bayesian, model confidence set, and equal weights. We compute individual-model and model-averaged point and interval forecasts at horizons of one to 20 years. We demonstrate gains in average accuracy of 4–23% for point forecasts and 3–24% for interval forecasts, with greater gains from the frequentist and equal weights approaches at longer horizons. Data for England and Wales are used to illustrate model averaging in forecasting age-specific fertility to 2036. The advantages and further potential of model averaging for fertility forecasting are discussed. As the accuracy of model-averaged forecasts depends on the accuracy of the individual models, there is ongoing need to develop better models of fertility for use in forecasting and model averaging. We conclude that model averaging holds considerable promise for the improvement of fertility forecasting in a systematic way using existing models and warrants further investigation.
机译:摘要肥力预测的准确性证明了具有挑战性,并认证重申关注。提高准确性的一种方法是通过模型平均来结合一组现有模型的优势。使用经验模型权重导出模型平均预测,该重量基于历史数据优化每个预测地平线的预测精度。我们使用17个国家和六种模型的数据应用模型对生育预测。比较四种模型平均方法:频率,贝叶斯,模型置信度集和相等的权重。我们计算各个模型和模型平均点和间隔预测一到20年。我们展示平均准确性的增益4-23%,对于点预测,间隔预测3-24%,从频繁的频率和平等的重量获得更大的收益在较长的视野中。英格兰和威尔士的数据用于说明预测年龄特异性生育能力的模型平均值。讨论了肥力预测的模型平均的优点和进一步潜力。由于模型平均预测的准确性取决于各个模型的准确性,因此需要开发更好的肥力模型,以便在预测和型号平均使用。我们得出结论,模型平均值对利用现有模型以系统的方式改善生育率预测并进行进一步调查,对肥沃预测的持久性具有相当大的承诺。

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