Intermittent demand forecasting is a ubiquitous and challenging problem in production systems and supply chain management. In recent years, there has been a growing focus on developing forecasting approaches for intermittent demand from academic and practical perspectives. However, limited attention has been given to forecast combination methods, which have achieved 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. The proposed framework has been shown to improve the accuracy of point and quantile forecasts based on two real data sets. Further, some analysis of features, forecasting pools and computational efficiency is also provided. The findings indicate the intelligibility and flexibility of the proposed approach in intermittent demand forecasting and offer insights regarding inventory decisions.
翻译:在生产系统和供应链管理方面,不定期需求预测是一个普遍而具有挑战性的问题,近年来,人们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,因为预测组合方法在预测快速移动的时间序列方面取得了有竞争力的业绩,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,拟议框架表明,根据两个实际数据集,提高点预测和量化预测的准确性,此外,还提供了一些特征分析、预测集合和计算效率,研究结果表明,拟议方法在间歇性需求预测中具有洞察力和灵活性,并就清单决定提供洞察力。