A novel multi-phase hierarchical forecasting approach with machine learning in supply chain management

Sajjad Taghiyeh , David C. Lengacher , Amir Hossein Sadeghi , Amirreza Sahebi-Fakhrabad , Robert B. Handfield
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引用次数: 6

Abstract

Hierarchical time series demands are often associated with products, time frames, or geographic aggregations. Traditionally, these hierarchies have been forecasted using “top-down,” “bottom-up,” or “middle-out” approaches. This study advocates using child-level forecasts in a hierarchical supply chain to improve parent-level forecasts. Improved forecasts can considerably reduce logistics costs, especially in e-commerce. We propose a novel multi-phase hierarchical approach for independently forecasting each series in a hierarchy using machine learning. We then combine all forecasts to allow a second-phase model estimation at the parent level. Sales data from a logistics solutions provider is used to compare our approach to “bottom-up” and “top-down” methods. Our results demonstrate an 82–90% improvement in forecast accuracy. Using the proposed method, supply chain planners can derive more accurate forecasting results by exploiting the benefit of multivariate data.

供应链管理中基于机器学习的多阶段分层预测方法
分层时间序列需求通常与产品、时间框架或地理聚合相关联。传统上,这些层次结构是使用“自上而下”、“自下而上”或“从中向外”的方法进行预测的。这项研究提倡在分级供应链中使用子级预测来改进父级预测。改进预测可以大大降低物流成本,尤其是在电子商务领域。我们提出了一种新的多阶段分层方法,用于使用机器学习独立预测分层中的每个序列。然后,我们将所有预测结合起来,以便在父级进行第二阶段模型估计。物流解决方案提供商的销售数据用于将我们的方法与“自下而上”和“自上而下”的方法进行比较。我们的结果表明,预测准确率提高了82–90%。使用所提出的方法,供应链规划者可以利用多元数据的优势得出更准确的预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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