A hybrid forecasting model with logistic regression and neural networks for improving key performance indicators in supply chains

Rostyslav Pietukhov, Mujthaba Ahtamad, Mona Faraji-Niri, Tarek El-Said
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Abstract

This study investigates the potential of predictive analytics in improving Key Performance Indicators (KPIs) forecasting by leveraging Lean implementation data in supply chain enterprises. A novel methodology is proposed, incorporating two key enhancements: using Lean maturity assessments as a new data source and developing a hybrid forecasting model combining Logistic regression and Neural Network techniques. The proposed methodology is evaluated through a comprehensive empirical study involving 30 teams in a large supply chain company, revealing notable improvements in forecasting accuracy. Compared to a baseline scenario without process improvement data, the new methodology achieves an enhanced accuracy score by 17% and an improved F1 score by 13 %. These findings highlight the benefits of integrating Lean maturity assessments and adopting a hybrid forecasting model, contributing to the advancement of supply chain analytics. By incorporating lean maturity assessments, the forecasting process is enhanced, providing a deeper comprehension of the underlying Lean framework and the impact of its elements on supply chain performance. Additionally, adopting a hybrid model aligns with current best practices in forecasting, allowing for the utilisation of various techniques to optimise KPI prediction accuracy while leveraging their respective strengths.

供应链关键绩效指标改进的逻辑回归与神经网络混合预测模型
本研究通过利用供应链企业的精益实施数据,调查了预测分析在改进关键绩效指标(KPI)预测方面的潜力。提出了一种新的方法,包括两个关键的改进:使用精益成熟度评估作为新的数据源,以及开发一个结合逻辑回归和神经网络技术的混合预测模型。通过对一家大型供应链公司的30个团队进行的全面实证研究,对所提出的方法进行了评估,揭示了预测准确性的显著提高。与没有过程改进数据的基线场景相比,新方法的准确度得分提高了17%,F1得分提高了13%。这些发现突出了整合精益成熟度评估和采用混合预测模型的好处,有助于推进供应链分析。通过纳入精益成熟度评估,预测过程得到了加强,从而更深入地理解了基本的精益框架及其要素对供应链绩效的影响。此外,采用混合模型符合当前预测的最佳实践,允许利用各种技术来优化KPI预测的准确性,同时利用它们各自的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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