FROM CREDIT SCORING TO REGULATORY SCORING: COMPARING CREDIT SCORING MODELS FROM A REGULATORY PERSPECTIVE

IF 4.8 2区 经济学 Q1 ECONOMICS Technological and Economic Development of Economy Pub Date : 2022-12-15 DOI:10.3846/tede.2022.17045
Yufei Xia, Zijun Liao, Jun Xu, Yinguo Li
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Abstract

Conventional credit scoring models evaluated by predictive accuracy or profitability typically serve the financial institutions and can hardly reflect their contribution on financial stability. To remedy this, we develop a novel regulatory scoring framework to quantify and compare the corresponding regulatory capital charge errors of credit scoring models. As an application of RegTech, the proposed framework considers the characteristic of example-dependence and costsensitivity in credit scoring, which is expected to enhance the ability of risk absorption of financial institutions and thus benefit the regulators. Validated on two real-world credit datasets, empirical results reveal that credit scoring models with good predictive accuracy or profitability do not necessarily provide low capital charge requirement error, which further highlights the importance of regulatory scoring framework. The family of gradient boosting decision tree (GBDT) provides significantly better average performance than industry benchmarks and deep multilayer perceptron network, especially when financial stability is the primary focus. To further examine the robustness of the proposed regulatory scoring, sampling techniques, cut-off value modification, and probability calibration are employed within the framework and the main conclusions hold in most cases. Furthermore, the analysis on the interpretability via TreeSHAP algorithm alleviates the concerns on transparency of GBDT-based models, and confirms the important roles of loan characteristics, borrowers’ solvency and creditworthiness as powerful predictors in credit scoring. Finally, the managerial implications for both financial institutions and regulators are discussed.
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从信用评分到监管评分:从监管角度比较信用评分模型
传统的信用评分模型通常以预测准确性或盈利能力来评估,服务于金融机构,难以反映其对金融稳定的贡献。为了解决这个问题,我们开发了一个新的监管评分框架来量化和比较信用评分模型的相应监管资本支出误差。作为RegTech的一种应用,该框架考虑了信用评分的样本依赖和成本敏感的特点,有望提高金融机构的风险吸收能力,从而使监管机构受益。在两个真实信用数据集上验证的实证结果表明,具有良好预测精度或盈利能力的信用评分模型并不一定提供低的资本充足率要求误差,这进一步凸显了监管评分框架的重要性。梯度增强决策树(GBDT)家族提供了比行业基准和深度多层感知器网络更好的平均性能,特别是当金融稳定性是主要关注点时。为了进一步检验所提出的监管评分的稳健性,在框架内采用了抽样技术、截止值修正和概率校准,在大多数情况下,主要结论成立。此外,通过TreeSHAP算法对可解释性的分析,缓解了基于gbdt的模型对透明度的担忧,并证实了贷款特征、借款人的偿债能力和信誉在信用评分中的重要预测作用。最后,讨论了对金融机构和监管机构的管理影响。
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来源期刊
CiteScore
10.00
自引率
8.50%
发文量
66
审稿时长
15 weeks
期刊介绍: Technological and Economic Development of Economy is a refereed journal that publishes original research and review articles and book reviews. The Journal is designed for publishing articles in the following fields of research: systems for sustainable development, policy on sustainable development, legislation on sustainable development, strategies, approaches and methods for sustainable development, visions and scenarios for the future, education for sustainable development, institutional change and sustainable development, health care and sustainable development, alternative economic paradigms for sustainable development, partnership in the field of sustainable development, industry and sustainable development, sustainable development challenges to business and management, technological changes and sustainable development, social aspects of sustainability, economic dimensions of sustainability, political dimensions of sustainability, innovations, life cycle design and assessment, ethics and sustainability, sustainable design and material selection, assessment of environmental impact, ecology and sustainability, application case studies, best practices, decision making theory, models of operations research, theory and practice of operations research, statistics, optimization, simulation. All papers to be published in Technological and Economic Development of Economy are peer reviewed by two appointed experts. The Journal is published quarterly, in March, June, September and December.
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