Probabilistic, hierarchically coherent forecasting is a key problem in many practical forecasting applications -- the goal is to obtain coherent probabilistic predictions for a large number of time series arranged in a pre-specified tree hierarchy. In this paper, we present an end-to-end deep probabilistic model for hierarchical forecasting that is motivated by a classical top-down strategy. It jointly learns the distribution of the root time series, and the (dirichlet) proportions according to which each parent time-series is split among its children at any point in time. The resulting forecasts are naturally coherent, and provide probabilistic predictions over all time series in the hierarchy. We experiment on several public datasets and demonstrate significant improvements of up to 26% on most datasets compared to state-of-the-art baselines. Finally, we also provide theoretical justification for the superiority of our top-down approach compared to the more traditional bottom-up modeling.
翻译:概率、等级一致的预测是许多实际预测应用中的一个关键问题 -- -- 目标是为在事先指定的树级结构中安排的大量时间序列取得一致的概率预测。在本文中,我们提出了一个由经典的自上而下战略驱动的从端到端的深度概率预测模型。它共同了解根时间序列的分布情况,以及每个父时间序列在任何时刻在子女之间分割的(二分位)比例。由此产生的预测是自然一致的,并提供了等级结构中所有时间序列的概率预测。我们在几个公共数据集上进行了实验,并展示了与最新基线相比,大多数数据集中高达26%的重大改进。最后,我们还从理论上为我们自上而下方法的优越性提供了理论依据,与较传统的自下而上的模型相比。</s>