Monitoring corporate credit risk with multiple data sources

Du Ni, Ming K. Lim, Xingzhi Li, Ying Qu, Mei Yang
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引用次数: 3

Abstract

PurposeMonitoring corporate credit risk (CCR) has traditionally relied on such indicators as income, debt and inventory at a company level. These data are usually released on a quarterly or annual basis by the target company and include, exclusively, the financial data of the target company. As a result of this exclusiveness, the models for monitoring credit risk usually fail to account for some significant information from different sources or channels, like the data of its supply chain partner companies and other closely relevant data yet available from public networks, and it is these seldom used data that can help unveil the immediate CCR changes and how the risk is being propagated along the supply chain. This study aims to discuss the a forementioned issues.Design/methodology/approachGoing beyond the existing CCR prediction data, this study intends to address the impact of supply chain data and network activity data on CCR prediction, by integrating machine learning technology into the prediction to verify whether adding new data can improve the predictability.FindingsThe results show that the predictive errors of the datasets after adding supply chain data and network activity data to them are made the ever least. Moreover, intelligent algorithms like support vector machine (SVM), compared to traditionally used methods, are better at processing nonlinear datasets and mining complex relationships between multi-variable indicators for CCR evaluation.Originality/valueThis study indicates that bringing in more information of multiple data sources combined with intelligent algorithms can help companies prevent risk spillovers in the supply chain from causing harm to the company, and, as well, help customers evaluate the creditworthiness of the entity to lessen the risk of their investment.
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利用多个数据源监控企业信用风险
目的监测企业信用风险(CCR)传统上依赖于公司层面的收入、债务和库存等指标。这些数据通常由目标公司每季度或每年发布一次,其中仅包括目标公司的财务数据。由于这种排他性,监测信用风险的模型通常无法考虑来自不同来源或渠道的一些重要信息,例如其供应链合作伙伴公司的数据和其他从公共网络中可用的密切相关数据,而正是这些很少使用的数据可以帮助揭示直接的CCR变化以及风险如何沿着供应链传播。本研究旨在探讨上述问题。设计/方法/方法在现有CCR预测数据的基础上,本研究旨在解决供应链数据和网络活动数据对CCR预测的影响,通过将机器学习技术集成到预测中,以验证添加新数据是否可以提高可预测性。结果表明,加入供应链数据和网络活动数据后,数据集的预测误差最小。此外,与传统方法相比,支持向量机(SVM)等智能算法更擅长处理非线性数据集,挖掘多变量指标之间的复杂关系,用于CCR评价。原创性/价值本研究表明,引入更多的多数据源信息,结合智能算法,可以帮助企业防止供应链中的风险溢出对企业造成伤害,也可以帮助客户评估实体的信誉,从而降低投资风险。
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