Using deep learning to interpolate the missing data in time-series for credit risks along supply chain

Wenfeng Zhang, Ming K. Lim, Mei Yang, Xingzhi Li, Du Ni
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Abstract

PurposeAs the supply chain is a highly integrated infrastructure in modern business, the risks in supply chain are also becoming highly contagious among the target company. This motivates researchers to continuously add new features to the datasets for the credit risk prediction (CRP). However, adding new features can easily lead to missing of the data.Design/methodology/approachBased on the gaps summarized from the literature in CRP, this study first introduces the approaches to the building of datasets and the framing of the algorithmic models. Then, this study tests the interpolation effects of the algorithmic model in three artificial datasets with different missing rates and compares its predictability before and after the interpolation in a real dataset with the missing data in irregular time-series.FindingsThe algorithmic model of the time-decayed long short-term memory (TD-LSTM) proposed in this study can monitor the missing data in irregular time-series by capturing more and better time-series information, and interpolating the missing data efficiently. Moreover, the algorithmic model of Deep Neural Network can be used in the CRP for the datasets with the missing data in irregular time-series after the interpolation by the TD-LSTM.Originality/valueThis study fully validates the TD-LSTM interpolation effects and demonstrates that the predictability of the dataset after interpolation is improved. Accurate and timely CRP can undoubtedly assist a target company in avoiding losses. Identifying credit risks and taking preventive measures ahead of time, especially in the case of public emergencies, can help the company minimize losses.
利用深度学习对供应链信用风险缺失数据进行时间序列插值
供应链是现代商业中高度集成的基础设施,供应链中的风险在目标公司之间也具有高度传染性。这促使研究人员不断为信用风险预测(CRP)的数据集添加新的特征。然而,添加新功能很容易导致数据丢失。设计/方法/途径基于CRP文献中总结的空白,本研究首先介绍了构建数据集和构建算法模型的方法。然后,本文在三个缺失率不同的人工数据集上测试了算法模型的插值效果,并比较了其在真实数据集和不规则时间序列缺失数据中插值前后的可预测性。发现本文提出的时间衰减长短期记忆(TD-LSTM)算法模型能够捕获更多、更好的时间序列信息,有效地对缺失数据进行插值,从而监测不规则时间序列中的缺失数据。此外,对于经过TD-LSTM插值后的不规则时间序列缺失数据集,深度神经网络算法模型可用于CRP。独创性/价值本研究充分验证了TD-LSTM插值效果,并证明插值后数据集的可预测性得到了提高。准确及时的CRP无疑可以帮助目标公司避免损失。提前识别信用风险并采取预防措施,特别是在突发公共事件的情况下,可以帮助公司将损失降到最低。
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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