论文标题

与机器学习的分层预测和解

Hierarchical forecast reconciliation with machine learning

论文作者

Spiliotis, Evangelos, Abolghasemi, Mahdi, Hyndman, Rob J, Petropoulos, Fotios, Assimakopoulos, Vassilios

论文摘要

通过在不同的聚合级别提供相干预测,已广泛使用层次预测方法来支持对齐决策。传统的分层预测方法,例如自下而上和自上而下的方法,重点介绍了特定的聚合级别,以锚定预测。在过去的几十年中,这些方法已被各种线性组合方法所取代,这些方法可以利用完整层次结构的信息来产生更准确的预测。但是,这些组合方法的性能取决于所检查系列的特殊性及其关系。本文提出了一种基于机器学习的新型层次预测方法,该方法以三种重要方式处理了这些限制。首先,提出的方法允许基础预测的非线性组合,因此比线性方法更一般。其次,它在结构上结合了改进样本后的经验预测准确性和连贯性的目标。最后,由于其非线性性质,我们的方法以直接和自动化的方式有选择地将基本预测结合在一起,而无需使用完整的信息来为每个系列和级别生成对帐的预测。使用来自旅游业和零售行业的两个不同数据集评估了所提出的方法。我们的结果表明,所提出的方法比现有方法给出了优越的预测,尤其是当包含层次结构的系列不具有相同模式的特征时。

Hierarchical forecasting methods have been widely used to support aligned decision-making by providing coherent forecasts at different aggregation levels. Traditional hierarchical forecasting approaches, such as the bottom-up and top-down methods, focus on a particular aggregation level to anchor the forecasts. During the past decades, these have been replaced by a variety of linear combination approaches that exploit information from the complete hierarchy to produce more accurate forecasts. However, the performance of these combination methods depends on the particularities of the examined series and their relationships. This paper proposes a novel hierarchical forecasting approach based on machine learning that deals with these limitations in three important ways. First, the proposed method allows for a non-linear combination of the base forecasts, thus being more general than the linear approaches. Second, it structurally combines the objectives of improved post-sample empirical forecasting accuracy and coherence. Finally, due to its non-linear nature, our approach selectively combines the base forecasts in a direct and automated way without requiring that the complete information must be used for producing reconciled forecasts for each series and level. The proposed method is evaluated both in terms of accuracy and bias using two different data sets coming from the tourism and retail industries. Our results suggest that the proposed method gives superior point forecasts than existing approaches, especially when the series comprising the hierarchy are not characterized by the same patterns.

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