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A data-driven and network-aware approach for credit risk prediction in supply chain finance

机译:供应链金融中信用风险预测的数据驱动和网络感知方法

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Purpose The purpose of this paper is to propose a data-driven model to predict credit risks of actors collaborating within a supply chain finance (SCF) network based on the analysis of their network attributes. This can support applying reverse factoring mechanisms in SCFs. Design/methodology/approach Based on network science, the network measures of the actors collaborating in the investigated SCF are derived through a social network analysis. Then several supervised machine learning algorithms are applied to predict the credit risks of the actors on the basis of their network level and organizational-level characteristics. For this purpose, a data set from an SCF within an automotive industry in Iran is used. Findings The findings of the research clearly demonstrate that considering the network attributes of the actors within the prediction models can significantly enhance the accuracy and precision of the models. Research limitations/implications The main limitation of this research is to investigate the applicability and effectiveness of the proposed model within a single case. Practical implications The proposed model can provide a well-established basis for financial intermediaries in SCFs to make more sophisticated decisions within financial facilitation mechanisms. Originality/value This study contributes to the existing literature of credit risk evaluation by considering credit risk as a systematic risk that can be influenced by network measures of collaborating actors. To do so, the paper proposes an approach that considers network characteristics of SCFs as critical attributes to predict credit risk.
机译:目的本文的目的是提出数据驱动的模型,以预测基于其网络属性的分析的供应链金融(SCF)网络中协作的演员的信用风险。这可以支持在SCFS中应用反向体系机制。基于网络科学的设计/方法/方法,通过社交网络分析导出了调查的SCF中协作的演员的网络测量。然后应用了几种监督机器学习算法以基于其网络级别和组织级别特征来预测演员的信用风险。为此目的,使用了来自伊朗汽车行业内的SCF中的数据。结果研究结果清楚地表明,考虑到预测模型内的演员的网络属性可以显着提高模型的准确性和精度。研究限制/影响本研究的主要限制是调查拟议模型在单一案例中的适用性和有效性。实际意义拟议的模式可以为SCFS中的金融中介机构提供良好的基础,以在财务促进机制中做出更复杂的决策。本研究的原创性/值通过将信用风险视为可以受到合作行动者的网络措施来影响的系统风险,有助于现有的信用风险评估文献。为此,本文提出了一种方法,将SCFS的网络特征视为预测信用风险的关键属性。

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