Intermittent demand forecasting is a ubiquitous and challenging problem in operations and supply chain management. There has been a growing focus on developing forecasting approaches for intermittent demand from academic and practical perspectives in recent years. However, limited attention has been given to forecast combination methods, which have been proved to achieve competitive performance in forecasting fast-moving time series. The current study aims to examine the empirical outcomes of some existing forecast combination methods, and propose a generalized feature-based framework for intermittent demand forecasting. We conduct a simulation study to perform a large-scale comparison of a series of combination methods based on an intermittent demand classification scheme. Further, a real data set is used to investigate the forecasting performance and offer insights with regards the inventory performance of the proposed framework by considering some complementary error measures. The proposed framework leads to a significant improvement in forecast accuracy and offers the potential of flexibility and interpretability in inventory control.
翻译:短期需求预测是业务和供应链管理中普遍存在的、具有挑战性的问题,近年来越来越注重从学术和实践角度对间歇性需求制定预测方法,然而,对预测组合方法的重视有限,因为预测组合方法已证明在预测快速移动的时间序列方面能取得有竞争力的业绩,目前的研究旨在审查某些现有预测组合方法的经验结果,并为间歇性需求预测提出一个通用的基于特征的框架;我们进行模拟研究,对基于间歇性需求分类办法的一系列混合方法进行大规模比较;此外,还利用一套真实的数据集来调查预测业绩,并通过考虑一些补充错误措施,就拟议框架的库存业绩提出见解;拟议框架使预测的准确性大为改善,并为库存控制的灵活性和可解释性提供了潜力。