Hierarchical forecasting with intermittent time series is a challenge in both research and empirical studies. Vast research focuses on improving the accuracy of each hierarchy, especially the intermittent time series at bottom levels. It then reconciles forecasts at each hierarchy to further improve the overall performance. In this paper, we present a forecasting with hierarchical alignment approach that treats the bottom level forecasts as mutable to ensure higher forecasting accuracy on the upper levels of the hierarchy. We employ a pure deep learning forecasting approach N-BEATS for continuous time series on top levels and a widely used tree-based algorithm LightGBM for the bottom level intermittent time series. The hierarchical forecasting with alignment approach is a simple yet effective variant of the bottom-up method, which accounts for biases that are difficult to observe at the bottom level. It allows suboptimal forecasts at the lower level to retain a higher overall performance. The approach in this empirical study was developed by the first author during the M5 Forecasting Accuracy competition, ranking the second place. The approach is also business orientated and could be beneficial for business strategic planning.
翻译:在研究和实证研究中,以间歇时间序列进行分级预测是一项挑战。 大型研究的重点是提高每个等级的准确性,特别是底层的间歇时间序列,然后调和各个等级的预测,以进一步提高总体绩效。 在本文件中,我们提出了一个与等级一致的预测办法,将底层的预测视为可变数据,以确保较高层次的预测准确性。我们采用了纯深层学习预测办法N-BEATS,在最高层连续的时间序列中采用,在底层间歇时间序列中采用广泛使用的树基算法LightGBM。 采用对齐方法的等级预测是自下而上方法的一个简单而有效的变式,它说明在底层难以观察的偏差。它使较低层次的次优化预测能够保持更高的总体绩效。这一经验研究的方法是第一位作者在M5预测准确性竞争期间开发的,排在第二位。该方法也具有业务导向,并可能对商业战略规划有益。