Integrated Model for Predicting Supply Chain Risk Through Machine Learning Algorithms

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引用次数: 1

Abstract

The machine learning model has become a critical consideration in the supply chain. Most of the companies have experienced vari-ous supply chain risks over the past three years. Earlier risk prediction has been performed by supply chain risk management. In this study, an integrated supply chain operations reference (ISCOR) model has been used to evaluate the organization's supply chain risk. Machine learning (ML) has become a hot topic in research and industry in the last few years. With this motivation, we have moved in the direction of a machine learning-based pathway to predict the supply chain risk. The great attraction of this research is that suppliers will understand the associated risk in the activity. This research includes data pre-processing, feature extraction, data transformation, and missing value replacement. The proposed integrated model involves the support vector machine (SVM), k near-est neighbor (k-NN), random forest (RF), decision tree (DT), multiple linear regression (MLR) algorithms, measured performance, and prediction of supply chain risk. Also, these algorithms have performed a comparative analysis under different aspects. Among the other algorithms, the random forest algorithm achieves an accuracy of 99% and has accomplished superior results with a maxi-mum precision of 0.99, recall of 0.99, and F-score of 0.99 with 1% error rate. The model’s prediction indicates that it can be used to find the supply chain risk. Finally, the limitation and the challenges discussed also provide an outlook for future research direction to perform effective management to mitigate the risk.
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基于机器学习算法的供应链风险预测集成模型
机器学习模型已成为供应链中的一个重要考虑因素。在过去三年中,大多数公司都经历了各种供应链风险。供应链风险管理已经进行了早期风险预测。在本研究中,使用综合供应链运营参考(ISCOR)模型来评估组织的供应链风险。近年来,机器学习(ML)已成为研究和工业界的热门话题。有了这一动机,我们朝着基于机器学习的途径预测供应链风险的方向发展。这项研究的最大吸引力在于,供应商将了解活动中的相关风险。该研究包括数据预处理、特征提取、数据转换和缺失值替换。所提出的集成模型包括支持向量机(SVM)、k近邻(k-NN)、随机森林(RF)、决策树(DT)、多元线性回归(MLR)算法、测量性能和供应链风险预测。此外,这些算法在不同方面进行了比较分析。在其他算法中,随机森林算法实现了99%的准确率,并取得了优异的结果,最大精度为0.99,召回率为0.99。F分数为0.99(错误率为1%)。该模型的预测结果表明,该模型可用于发现供应链风险。最后,讨论的局限性和挑战也为未来的研究方向提供了展望,以进行有效的管理来减轻风险。
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来源期刊
CiteScore
3.80
自引率
6.20%
发文量
57
审稿时长
20 weeks
期刊介绍: IJMEMS is a peer reviewed international journal aiming on both the theoretical and practical aspects of mathematical, engineering and management sciences. The original, not-previously published, research manuscripts on topics such as the following (but not limited to) will be considered for publication: *Mathematical Sciences- applied mathematics and allied fields, operations research, mathematical statistics. *Engineering Sciences- computer science engineering, mechanical engineering, information technology engineering, civil engineering, aeronautical engineering, industrial engineering, systems engineering, reliability engineering, production engineering. *Management Sciences- engineering management, risk management, business models, supply chain management.
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