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ACOMS+ 및 학술지 리포지터리 설명회

  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
  • 2024년 07월 03일(수) 13:30
 

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A customer credit Prediction Researched to Improve Credit Stability based on Artificial Intelligence

인공지능연구 / Korean Journal of Artificial Intelligence, (E)2508-7894
2021, v.9 no.1, pp.21-27
https://doi.org/https://doi.org/10.24225/kjai.2021.9.1.21
MUN, Ji-Hui (Department of Medical IT, Eulji University)
JUNG, Sang Woo (ALLFORLAND Co.Ltd)
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Abstract

In this Paper, Since the 1990s, Korea's credit card industry has steadily developed. As a result, various problems have arisen, such as careless customer information management and loans to low-credit customers. This, in turn, had a high delinquency rate across the card industry and a negative impact on the economy. Therefore, in this paper, based on Azure, we analyze and predict the delinquency and delinquency periods of credit loans according to gender, own car, property, number of children, education level, marital status, and employment status through linear regression analysis and enhanced decision tree algorithm. These predictions can consequently reduce the likelihood of reckless credit lending and issuance of credit cards, reducing the number of bad creditors and reducing the risk of banks. In addition, after classifying and dividing the customer base based on the predicted result, it can be used as a basis for reducing the risk of credit loans by developing a credit product suitable for each customer. The predicted result through Azure showed that when predicting with Linear Regression and Boosted Decision Tree algorithm, the Boosted Decision Tree algorithm made more accurate prediction. In addition, we intend to increase the accuracy of the analysis by assigning a number to each data in the future and predicting again.

keywords
Machine Learning, Lnear Regression, Boosted Decision Tree Regression, Credit loans, Credit Card, Delinquency

인공지능연구