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Default Prediction Modeling based on economic costs Minimization

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  • 발행기관
    한국재무학회 바로가기
  • 간행물
    한국재무학회 학술대회 바로가기
  • 통권
    2023년 한국재무학회 추계학술대회 (2023.11)바로가기
  • 페이지
    pp.551-584
  • 저자
    Chan Park, Seungyoo Jeon, Kisung Yang
  • 언어
    영어(ENG)
  • URL
    https://www.earticle.net/Article/A437877

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원문정보

초록

영어
In the default prediction problem, the cost from the failure of forecasting defaults is much bigger than that of forecasting non-defaults. The cost asymmetry is deeper in the corporate default prediction than the retail as corporate loan portfolios are not granular. However, the two types of costs are treated equally in general as default prediction models are usually estimated to minimize prediction errors or maximize statistical performance. This practice might not fulfill the goal of risk management to minimize economic losses. To mitigate this issue, this study apply cost-sensitive learning approach to default prediction, which minimizes economic costs instead of statistical errors. We define economic costs and test them for various levels of the cost asymmetry by employing Logistic regression, XGBoost, and LightGBM. As a result of empirical experiments with Taiwanese and Polish corporate default data, we first find that the proposed cost-sensitive models are superior to the cost-insensitive counterparts in terms of economic cost, mostly regardless of the cost asymmetry scenarios. Secondly, nevertheless, the decreases in the statistical performance are relatively small – economic costs decrease 24.6% at the expense of the decrease in AUC of 4.6% on average. This suggests that financial firms can adopt the proposed default prediction models without violating the regulatory requirement on model quality. Lastly, we find that the features of high prediction power in the cost-sensitive and insensitive models are different, which has an important implication for credit monitoring.

목차

Abstract
1 Introduction
2 Methodology
2.1 Economic costs of the default prediction model
2.2 Cost-sensitive Logistic model
2.3 Cost-sensitive gradient-boosting model
2.4 Performance measures
2.5 Threshold to discriminate between a default and a normal
3 Empirical results
3.1 Data
3.2 The results of the cost-sensitive Logistic model
3.3 The results of cost-sensitive XGBoost model
3.4 The results of cost-sensitive LightGBM
3.5 Features analysis of the cost-sensitive model
4 Conclusion
References
Acknowledgements

키워드

Cost sensitivity learning Default prediction Economic cost Explainable AI.

저자

  • Chan Park [ Ph.D. Candidate, Department of Financial Technology Convergence, Soongsil University ] First Author
  • Seungyoo Jeon [ Ph.D. Candidate, Department of Financial Technology Convergence, Soongsil University ] Co-Author
  • Kisung Yang [ Assistant Professor, School of Finance, Soongsil University ] Corresponding Author

참고문헌

자료제공 : 네이버학술정보

간행물 정보

발행기관

  • 발행기관명
    한국재무학회 [The Korean Finance Association]
  • 설립연도
    1988
  • 분야
    사회과학>경영학
  • 소개
    본 회는 재무학 및 이와 관련되는 분야를 발전시키며 회원 상호간의 친목 도모를 목적으로 한다.

간행물

  • 간행물명
    한국재무학회 학술대회
  • 간기
    부정기
  • 수록기간
    2006~2024
  • 십진분류
    KDC 325 DDC 330

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