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Default Risk Prediction of Enterprises Based on Convolutional Neural Network in the Age of Big Data: Analysis from the Viewpoint of Different Balance Ratios

Author

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  • Zhe Li
  • Zhenhao Jiang
  • Xianyou Pan

Abstract

In the age of big data, machine learning models are globally used to execute default risk prediction. Imbalanced datasets and redundant features are two main problems that can reduce the performance of machine learning models. To address these issues, this study conducts an analysis from the viewpoint of different balance ratios as well as the selection order of feature selection. Accordingly, we first use data rebalancing and feature selection to obtain 32 derived datasets with varying ratios of balance and feature combinations for each dataset. Second, we propose a comprehensive metric model based on multimachine learning algorithms (CMM‐MLA) to select the best‐derived dataset with the optimal balance ratio and feature combination. Finally, the convolutional neural network (CNN) is trained on the selected derived dataset to evaluate the performance of our approach in terms of type‐II error, accuracy, G‐mean, and AUC. There are two contributions in this study. First, the optimal balance ratio is found through the classification accuracy, which changes the deficiency of the existing research that samples are imbalanced or the balance ratio is 1 : 1 and ensures the accuracy of the classification model. Second, a comprehensive metric model based on the machine learning algorithm is proposed, which can simultaneously find the best balance ratio and the optimal feature selection. The experimental results show that our method can noticeably improve the performance of CNN, and CNN outperforms the other four commonly used machine learning models in the task of default risk prediction on four benchmark datasets.

Suggested Citation

  • Zhe Li & Zhenhao Jiang & Xianyou Pan, 2022. "Default Risk Prediction of Enterprises Based on Convolutional Neural Network in the Age of Big Data: Analysis from the Viewpoint of Different Balance Ratios," Complexity, John Wiley & Sons, vol. 2022(1).
  • Handle: RePEc:wly:complx:v:2022:y:2022:i:1:n:5139562
    DOI: 10.1155/2022/5139562
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    References listed on IDEAS

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    1. Jong Wook Lee & So Young Sohn, 2021. "Evaluating borrowers’ default risk with a spatial probit model reflecting the distance in their relational network," PLOS ONE, Public Library of Science, vol. 16(12), pages 1-11, December.
    2. Shuping Li & Taotang Liu & M. Irfan Uddin, 2021. "Performance Prediction for Higher Education Students Using Deep Learning," Complexity, Hindawi, vol. 2021, pages 1-10, July.
    3. Zhengwei Ma & Wenjia Hou & Dan Zhang, 2021. "A credit risk assessment model of borrowers in P2P lending based on BP neural network," PLOS ONE, Public Library of Science, vol. 16(8), pages 1-21, August.
    4. Yang Liu & Qingguo Zeng & Joaquín Ordieres Meré & Huanrui Yang, 2019. "Anticipating Stock Market of the Renowned Companies: A Knowledge Graph Approach," Complexity, Hindawi, vol. 2019, pages 1-15, August.
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