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Academic Journal of Business & Management, 2022, 4(10); doi: 10.25236/AJBM.2022.041007.

Research on the Construction of Personal Credit Score Model Based on WOE Analysis and Logistics Model

Author(s)

Shuqi Liang1, Li Tan2

Corresponding Author:
Shuqi Liang
Affiliation(s)

1School of Information Engineering, Zhujiang College, South China Agricultural University, Guangzhou, 510900, China

2School of Information Management, Xinjiang University of Finance and Economics, Urumchi, 830000, China

Abstract

As the concept of credit consumption enters people's lives, personal credit loans are gradually becoming a consumer demand, which makes the problem of credit risk in the bank lending business even more serious. To better protect the interests of financial institutions, investors and consumers, and to make the financial world more balanced and secure, scoring and modelling personal credit can reduce the likelihood of credit risk by identifying and quantifying risks in advance, reducing losses and making reasonable and effective loan plans. This has important implications for financial institutions, investors and consumers alike, and plays a very important role in economic development. In this paper, we will study the model construction of individual credit scores by obtaining data from customers' basic attributes, repayment ability, credit transactions, property status, loan attributes, other factors and time windows, processing and analysing them, and using WOE analysis to determine whether the indicators are economically meaningful, and correlation analysis to check the relevance of variables and IV screening variables. The logistic regression model was then converted to a standard scorecard format through WOE transformation and the model was then tested to obtain the scoring criteria.

Keywords

Credit risk; credit score; WOE analysis method; logistic regression model

Cite This Paper

Shuqi Liang, Li Tan. Research on the Construction of Personal Credit Score Model Based on WOE Analysis and Logistics Model. Academic Journal of Business & Management (2022) Vol. 4, Issue 10: 38-42. https://doi.org/10.25236/AJBM.2022.041007.

References

[1] Liu Jing. Personal Credit Risk Rating Based on Cost-Sensitive Bayesian Classification [D]. Guangzhou: South China University of Technology. 2015

[2] Shi Qingyan, Jin Yunhui. A review of the main models and methods of personal credit scoring [J]. Statistical Research, 2003, 8(4): 36-39

[3] Mirta Bensic, Natasa Sarlija, Marijana Zekic-Susac. Modelling small-business credit scoring by using logistic regression, neural networks and decision trees. [J]. Int. Syst. in Accounting, Finance and Management, 2005, 13(3):

[4] Chuang Chun-Ling Huang Szu-Teng. A hybrid neural network approach for credit scoring [J]. Expert Systems, 2011, 28(2):

[5] Yu Wenjian, Shen Yichang . Research on Personal Credit Score Based on Logistic Model [J]. Hainan Finance, 2007, 3(6): 83-85

[6] Wang Li. Research on Credit Score of Small and Medium Enterprises Based on Logistic Regression Model [D]. Hefei: Hefei University of Technology, 2008

[7] Su Cheng . Research on Credit Risk Assessment Based on Logistic Regression Model [J]. Review of Applied Economics, 2011, 6(13): 215-220

[8] Chen Chunzhao, Xie Rui, Zha Jingyi, Zhu Jiaming. Research on credit risk assessment and credit strategy of small, medium and micro enterprises based on big data [J]. Journal of Natural Science of Harbin Normal University, 2021, 3 7 (4); 2 9-30

[9] Shangzhou Xia. Value Optimization Method of Online Lending Platform Based on WOE - Logistic Credit Scorecard Default Prediction Model [ D]. Wuhan: Central China Normal University. 2019. 17-18