论文标题
最佳和解,并不可变为预测
Optimal reconciliation with immutable forecasts
论文作者
论文摘要
在层次预测中相干预测的实际重要性启发了许多关于预测和解的研究。在这种方法下,为层次结构中的每个系列产生所谓的基础预测,随后对第二个对帐步骤进行调整以相干。核对方法已被证明可以提高预测准确性,但通常会调整每个系列的基本预测。但是,在操作环境中,有时需要或有益于预测和解后对某些变量保持不变的预测。在本文中,我们制定了和解方法,该方法可以保留对变量不变或“不可变”的预测子集的预测。与现有方法相反,这些不可变的预测并非全部来自相同的层次结构,我们的方法也可以应用于分组的层次结构。我们证明我们的方法可以保留基本预测中的公正性。我们的方法还可以解释基本预测错误之间的相关性,并确保预测的非阴性。我们还进行了经验实验,包括在大规模在线零售商的销售中应用,以评估我们提出的方法的影响。
The practical importance of coherent forecasts in hierarchical forecasting has inspired many studies on forecast reconciliation. Under this approach, so-called base forecasts are produced for every series in the hierarchy and are subsequently adjusted to be coherent in a second reconciliation step. Reconciliation methods have been shown to improve forecast accuracy, but will, in general, adjust the base forecast of every series. However, in an operational context, it is sometimes necessary or beneficial to keep forecasts of some variables unchanged after forecast reconciliation. In this paper, we formulate reconciliation methodology that keeps forecasts of a pre-specified subset of variables unchanged or "immutable". In contrast to existing approaches, these immutable forecasts need not all come from the same level of a hierarchy, and our method can also be applied to grouped hierarchies. We prove that our approach preserves unbiasedness in base forecasts. Our method can also account for correlations between base forecasting errors and ensure non-negativity of forecasts. We also perform empirical experiments, including an application to sales of a large scale online retailer, to assess the impacts of our proposed methodology.