基于降维回归模型的采购订单交货时间预测

Jundi Liu, Steven Hwang, Walter Yund, L. Boyle, A. Banerjee
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引用次数: 3

摘要

在当前的供应链运作中,由于信息交流有限和对供应商能力缺乏了解,供应商与原始设备制造商(oem)之间的交易有时效率低下和不可靠。对于原始设备制造商来说,大多数下游操作都是连续的,需要所有部件按时可用,以确保生产计划的成功执行。因此,准确预测采购订单(POs)的交付时间对于满足这些需求至关重要。然而,由于供应商的分布位置、时变的能力和能力以及原材料采购的意外变化,这种预测是具有挑战性的。我们通过开发随机森林和分位数回归森林形式的监督机器学习模型来解决其中的一些挑战,这些模型是在历史PO事务数据上训练的。此外,鉴于许多预测因子是分类变量,我们应用降维方法来确定最具影响力的类别水平。实际OEM数据的结果显示,与供应商提供的交货时间估计相比,预测误差要低得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Purchase Orders Delivery Times Using Regression Models With Dimension Reduction
In current supply chain operations, the transactions among suppliers and original equipment manufacturers (OEMs) are sometimes inefficient and unreliable due to limited information exchange and lack of knowledge about the supplier capabilities. For the OEMs, majority of downstream operations are sequential, requiring the availabilities of all the parts on time to ensure successful executions of production schedules. Therefore, accurate prediction of the delivery times of purchase orders (POs) is critical to satisfying these requirements. However, such prediction is challenging due to the suppliers’ distributed locations, time-varying capabilities and capacities, and unexpected changes in raw materials procurements. We address some of these challenges by developing supervised machine learning models in the form of Random Forests and Quantile Regression Forests that are trained on historical PO transactional data. Further, given the fact that many predictors are categorical variables, we apply a dimension reduction method to identify the most influential category levels. Results on real-world OEM data show effective performance with substantially lower prediction errors than supplier-provided delivery time estimates.
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