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Revisiting the Effects of Forecasting Method Selection and Information Sharing Under Volatile Demand in SCM Applications

机译:重新审视供应链管理中波动需求下预测方法选择和信息共享的影响

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Using a two-stage capacitated supply chain with four retailers and one supplier, this paper reveals that volatile demand and the supplier's own forecasting intelligence may limit the value of information sharing (IS). The results show that capacity tightness (CT) is the most important factor that affects the performance of the supply chain compared with the effects of forecasting methods and IS policies. When CT is low, order information sharing is not preferred, because the supplier's own forecasts are more beneficial. When CT is high, IS becomes valuable. In addition, this study demonstrates that advanced forecasting methods such as generalized autoregressive conditional heteroscedasticity (GARCH) and properly configured neural network models significantly reduce costs relative to the conventional forecasting methods under most scenarios examined. However, misspecified models often result in poor system performance. The findings also reveal significant interaction effects among forecasting method, IS, and CT. In order to achieve cost reduction, supply chain managers should jointly consider all the critical factors when selecting forecasting method and IS policy.
机译:使用由四个零售商和一个供应商组成的两阶段封闭的供应链,本文揭示出需求波动和供应商自身的预测情报可能会限制信息共享(IS)的价值。结果表明,与预测方法和IS策略的影响相比,能力紧缺(CT)是影响供应链绩效的最重要因素。当CT较低时,不希望共享订单信息,因为供应商自己的预测更有利。当CT高时,IS变得有价值。此外,这项研究表明,在大多数情况下,与传统的预测方法相比,先进的预测方法(例如广义自回归条件异方差(GARCH)和正确配置的神经网络模型)可显着降低成本。但是,模型指定错误通常会导致系统性能不佳。研究结果还揭示了预测方法,IS和CT之间的显着交互作用。为了降低成本,供应链管理者在选择预测方法和IS策略时应共同考虑所有关键因素。

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