APPLICATION OF BIG DATA ANALYTICS IN COMMERCIAL CREDIT RISK PREDICTION: CHALLENGES AND OPPORTUNITIES
Volume 2, Issue 3, Pp 74-77, 2024
DOI: 10.61784/wms3037
Author(s)
Jun Dai
Affiliation(s)
School of Business Administration, Baise University, Baise 533000, Guangxi, China.
Corresponding Author
Jun Dai
ABSTRACT
This study aims to explore the application of big data technology in commercial credit risk prediction, analyzing the opportunities and challenges it presents. The research reveals that big data technology offers significant advantages in credit risk prediction, notably enhancing the accuracy and real-time capabilities of such predictions. However, it also faces issues related to data quality, privacy protection, and model transparency. The study further suggests that future technological advancements will continue to propel the intelligentization of credit risk management, while emphasizing the need to strengthen attention to privacy and compliance.
KEYWORDS
Big data; Commercial credit; Credit risk prediction; Challenges and opportunities
CITE THIS PAPER
Jun Dai. Application of big data analytics in commercial credit risk prediction: challenges and opportunities. World Journal of Management Science. 2024, 2(3): 74-77. DOI: 10.61784/wms3037.
REFERENCES
[1] Wu PX, Lan ZY, Huang W, et al. Exploration of the application of a MOOC-based blended teaching model in medical undergraduate interns. Journal of Youjiang National Medical College, 2020, (01): 119-122.
[2] Gao L, Xiao J. Big data credit report in credit risk management of consumer finance. Wireless Commun Mob Comput, 2021, 2021: 4811086.
[3] Ilic I, Gorgülü B, Cevik M, et al. Explainable boosted linear regression for time series forecasting. Pattern Recognit, 2021, 120: 108144.
[4] Hasan MM, Popp J, Oláh J. Current landscape and influence of big data on finance. J Big Data, 2020, 7(1): 21.
[5] Wang Y, Xiuping S, Zhang Q. Can fintech improve the efficiency of commercial banks?—An analysis based on big data. Res Int Bus Finance, 2021, 55: 101338.
[6] Pang XR, Liu F, Li L, et al. Preliminary exploration of teaching reform for "Introduction to General Medicine" based on the concept of "Curriculum Ideological and Political Education". Journal of Youjiang National Medical College, 2020, (06): 806-809.
[7] Bello OA. Machine learning algorithms for credit risk assessment: an economic and financial analysis. Int J Manag, 2023, 10(1): 109-133.
[8] Luan H, Geczy P, Lai H, et al. Challenges and future directions of big data and artificial intelligence in education. Front Psychol, 2020, 11: 580820.
[9] Xu Y, Hu M, Liu H, et al. A hierarchical deep learning approach with transparency and interpretability based on small samples for glaucoma diagnosis. NPJ Digit Med, 2021, 4(1): 48.
[10] Thapa C, Camtepe S. Precision health data: Requirements, challenges and existing techniques for data security and privacy. Comput Biol Med, 2021, 129: 104130.