随机森林
计算机科学
供应链
回归
梯度升压
范畴变量
人工神经网络
产品(数学)
运筹学
机器学习
业务
统计
工程类
几何学
数学
营销
作者
Mustafa Can Camur,Sandipp Krishnan Ravi,Shadi Saleh
标识
DOI:10.1016/j.eswa.2024.123226
摘要
The COVID-19 pandemic and ongoing political and regional conflicts have a highly detrimental impact on the global supply chain and cause significant delays in logistics operations and international shipments. One of the most pressing concerns is the uncertainty surrounding the availability dates of products, which is critical information for companies to generate effective logistics and shipment plans. Therefore, accurately predicting availability dates plays a pivotal role in executing successful logistics operations, ultimately minimizing total transportation and inventory costs. We investigate the prediction of product availability dates for General Electric (GE) Gas Power's inbound shipments for gas and steam turbine service and manufacturing operations, utilizing both numerical and categorical features. We evaluate several regression models, including Simple Regression, Lasso Regression, Ridge Regression, Elastic Net, Random Forest (RF), Gradient Boosting Machine (GBM), and Neural Network models. Based on real-world data, our experiments demonstrate that the tree-based algorithms (i.e., RF and GBM) provide the best generalization error and outperforms all other regression models tested. We anticipate that our prediction models will assist companies in managing supply chain disruptions and reducing supply chain risks on a broader scale.
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