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Risk Identification-Based Association Rule Mining for Supply Chain Big Data

机译:基于风险识别的供应链大数据关联规则挖掘

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摘要

Since most supply chain processes include operational risks, the effectiveness of a corporation's success depends mainly on identifying, analyzing and managing them. Currently, supply chain risk management (SCRM) is an active research field for enhancing a corporation's efficiency. Although several techniques have been proposed, they still face a big challenge as they analyze only internal risk events from big data collected from the logistics of supply chain systems. In this paper, we analyze features that can identify risk labels in a supply chain. We propose defining risk events based on the association rule mining (ARM) technique that can categorize those in a supply chain based on a company's historical data. The empirical results we obtained using data collected from an Aluminum company showed that this technique can efficiently generate and predict the optimal features of each risk label with a higher than 96.5% accuracy.
机译:由于大多数供应链流程都包含运营风险,因此企业成功的有效性主要取决于识别,分析和管理它们。当前,供应链风险管理(SCRM)是提高公司效率的活跃研究领域。尽管已经提出了几种技术,但是它们仍然面临着巨大的挑战,因为它们仅分析从供应链系统的物流中收集的大数据中的内部风险事件。在本文中,我们分析了可以识别供应链中风险标签的功能。我们建议基于关联规则挖掘(ARM)技术来定义风险事件,该技术可以根据公司的历史数据对供应链中的风险事件进行分类。我们使用从铝业公司收集的数据获得的经验结果表明,该技术可以高效地生成和预测每个风险标签的最佳特征,准确度高于96.5%。

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