4.6 Article

A novel framework of credit risk feature selection for SMEs during industry 4.0

Journal

ANNALS OF OPERATIONS RESEARCH
Volume -, Issue -, Pages -

Publisher

SPRINGER
DOI: 10.1007/s10479-022-04849-3

Keywords

Credit rating; Credit risk; Feature selection; SMEs; Binary opposite whale optimization algorithm; Kolmogorov-Smirnov statistic

Funding

  1. National Natural Science Foundation of China [72173096, 71873103, 71731003]
  2. Soft Science Research Project of Ministry of Agriculture and Rural Affairs of the China [202122]
  3. Humanities and Social Science Research Project of Ministry of Education of China [21YJCZH107]
  4. Social Science Foundation of Shaanxi Province [2018D51]
  5. Credit Rating and Loan Pricing Project for Small Enterprises of the Bank of Dalian [2012-01]
  6. Tang Scholar Program of Northwest AF University [2021-04]

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This paper proposes a credit risk feature selection approach that integrates the binary opposite whale optimization algorithm and the Kolmogorov-Smirnov statistic. Empirical results show that the BOWOA-KS model outperforms other methods in improving SMEs' creditworthiness and access to loans.
With the development of industry 4.0, the credit data of SMEs are characterized by a large volume, high speed, diversity and low-value density. How to select the key features that affect the credit risk from the high-dimensional data has become the critical point to accurately measure the credit risk of SMEs and alleviate their financing constraints. In doing so, this paper proposes a credit risk feature selection approach that integrates the binary opposite whale optimization algorithm (BOWOA) and the Kolmogorov-Smirnov (KS) statistic. Furthermore, we use seven machine learning classifiers and three discriminant methods to verify the robustness of the proposed model by using three actual bank data from SMEs. The empirical results show that although no one artificial intelligence credit evaluation method is universal for different SMEs' credit data, the performance of the BOWOA-KS model proposed in this paper is better than other methods if the number of indicators in the optimal subset of indicators and the prediction performance of the classifier are considered simultaneously. By providing a high-dimensional data feature selection method and improving the predictive performance of credit risk, it could help SMEs focus on the factors that will allow them to improve their creditworthiness and more easily access loans from financial institutions. Moreover, it will also help government agencies and policymakers develop policies to help SMEs reduce their credit risks.

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