• Title/Summary/Keyword: Personal Credit Scoring

Search Result 4, Processing Time 0.017 seconds

An Application of Support Vector Machines to Personal Credit Scoring: Focusing on Financial Institutions in China (Support Vector Machines을 이용한 개인신용평가 : 중국 금융기관을 중심으로)

  • Ding, Xuan-Ze;Lee, Young-Chan
    • Journal of Industrial Convergence
    • /
    • v.16 no.4
    • /
    • pp.33-46
    • /
    • 2018
  • Personal credit scoring is an effective tool for banks to properly guide decision profitably on granting loans. Recently, many classification algorithms and models are used in personal credit scoring. Personal credit scoring technology is usually divided into statistical method and non-statistical method. Statistical method includes linear regression, discriminate analysis, logistic regression, and decision tree, etc. Non-statistical method includes linear programming, neural network, genetic algorithm and support vector machine, etc. But for the development of the credit scoring model, there is no consistent conclusion to be drawn regarding which method is the best. In this paper, we will compare the performance of the most common scoring techniques such as logistic regression, neural network, and support vector machines using personal credit data of the financial institution in China. Specifically, we build three models respectively, classify the customers and compare analysis results. According to the results, support vector machine has better performance than logistic regression and neural networks.

Privacy-Preserving Credit Scoring Using Zero-Knowledge Proofs (영지식 증명을 활용한 프라이버시 보장 신용평가방법)

  • Park, Chul;Kim, Jonghyun;Lee, Dong Hoon
    • Journal of the Korea Institute of Information Security & Cryptology
    • /
    • v.29 no.6
    • /
    • pp.1285-1303
    • /
    • 2019
  • In the current credit scoring system, the credit bureau gathers credit information from financial institutions and calculates a credit score based on it. However, because all sensitive credit information is stored in one central authority, there are possibilities of privacy violations and successful external attacks can breach large amounts of personal information. To handle this problem, we propose privacy-preserving credit scoring in which a user gathers credit information from financial institutions, calculates a credit score and proves that the score is calculated correctly using a zero-knowledge proof and a blockchain. In addition, we propose a zero-knowledge proof scheme that can efficiently prove committed inputs to check whether the inputs of a zero-knowledge proof are actually provided by financial institutions with a blockchain. This scheme provides perfect zero-knowledge unlike Agrawal et al.'s scheme, short CRSs and proofs, and fast proof and verification. We confirmed that the proposed credit scoring can be used in the real world by implementing it and experimenting with a credit score algorithm which is similar to that of the real world.

A Personal Credit Rating Using Convolutional Neural Networks with Transformation of Credit Data to Imaged Data and eXplainable Artificial Intelligence(XAI) (신용 데이터의 이미지 변환을 활용한 합성곱 신경망과 설명 가능한 인공지능(XAI)을 이용한 개인신용평가)

  • Won, Jong Gwan;Hong, Tae Ho;Bae, Kyoung Il
    • The Journal of Information Systems
    • /
    • v.30 no.4
    • /
    • pp.203-226
    • /
    • 2021
  • Purpose The purpose of this study is to enhance the accuracy score of personal credit scoring using the convolutional neural networks and secure the transparency of the deep learning model using eXplainalbe Artifical Inteligence(XAI) technique. Design/methodology/approach This study built a classification model by using the convolutional neural networks(CNN) and applied a methodology that is transformation of numerical data to imaged data to apply CNN on personal credit data. Then layer-wise relevance propagation(LRP) was applied to model we constructed to find what variables are more influenced to the output value. Findings According to the empirical analysis result, this study confirmed that accuracy score by model using CNN is highest among other models using logistic regression, neural networks, and support vector machines. In addition, With the LRP that is one of the technique of XAI, variables that have a great influence on calculating the output value for each observation could be found.

A Study on the Factors of Normal Repayment of Financial Debt Delinquents (국내 연체경험자의 정상변제 요인에 관한 연구)

  • Sungmin Choi;Hoyoung Kim
    • Information Systems Review
    • /
    • v.23 no.1
    • /
    • pp.69-91
    • /
    • 2021
  • Credit Bureaus in Korea commonly use financial transaction information of the past and present time for calculating an individual's credit scores. Compared to other rating factors, the repayment history information accounts for a larger weights on credit scores. Accordingly, despite full redemption of overdue payments, late payment history is reflected negatively for the assessment of credit scores for certain period of the time. An individual with debt delinquency can be classified into two groups; (1) the individuals who have faithfully paid off theirs overdue debts(Normal Repayment), and (2) those who have not and as differences of creditworthiness between these two groups do exist, it needs to grant relatively higher credit scores to the former individuals with normal repayment. This study is designed to analyze the factors of normal repayment of Korean financial debt delinquents based on credit information of personal loan, overdue payments, redemption from Korea Credit Information Services. As a result of the analysis, the number of overdue and the type of personal loan and delinquency were identified as significant variables affecting normal repayment and among applied methodologies, neural network models suggested the highest classification accuracy. The findings of this study are expected to improve the performance of individual credit scoring model by identifying the factors affecting normal repayment of a financial debt delinquent.