随着时间的推移描绘风险概况:一种新的多期贷款违约预测方法

IF 7 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Zhao Wang, Cuiqing Jiang, Huimin Zhao
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引用次数: 0

摘要

#html-body [data- pp -style=GHFD705]{justify-content:flex-start;display:flex;flex-direction:column;background-position:left top;background-size:cover;background-repeat:no-repeat;background-attachment:scroll}随着金融科技的快速发展,对动态信用风险评估的需求变得越来越重要。虽然以前的信用评分研究主要集中在单期贷款违约预测上,但我们呼吁一种新的途径-多期违约预测(MPDP) -来描述随时间变化的风险概况。为了解决MPDP带来的挑战,如单调的违约概率预测和复杂的关系调节,我们提出了一种新的方法,混合和集体评分(HACS)。我们设计了一种混合建模策略,分别通过违约判别模型和违约时间估计模型来预测借款人是否违约以及何时违约,并通过概率框架将两者综合起来。为了适应各种可能的违约时间模式并测量违约概率在连续时间间隔上的分布,我们提出了一种联合违约建模方法来训练默认时间估计模型。在模型(默认时间预测性能和判别性能)和机制(可识别性和可判别性)层面的实证评估,以及在应用(授予性能和盈利性能)层面的影响分析表明,HACS在所有方面都优于基准生存分析和多标签学习方法。它可以更准确地预测违约时间,为金融机构和投资者发放贷款和选择贷款组合提供更好的决策支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depicting Risk Profile over Time: A Novel Multiperiod Loan Default Prediction Approach
With the rapid development of fintech, the need for dynamic credit risk evaluation is becoming increasingly important. While previous studies on credit scoring have mostly focused on single-period loan default prediction, we call for a new avenue—multiperiod default prediction (MPDP)—to depict risk profiles over time. To address the challenges raised by MPDP, such as monotonic default probability prediction and complex relationship accommodation, we propose a novel approach, hybrid and collective scoring (HACS). We design a hybrid modeling strategy to predict whether and when a borrower will default separately through a default discrimination model and a default time estimation model, respectively, and synthesize them through a probabilistic framework. To accommodate various possible patterns of default time and measure the distribution of default probability over successive time intervals, we propose a joint default modeling method to train the default time estimation model. Empirical evaluations at the model (time-to-default prediction performance and discrimination performance) and mechanism (identifiability and discriminability) levels, as well as impact analyses at the application (granting performance and profitability performance) level, show that HACS outperforms the benchmarked survival analysis and multilabel learning methods on all fronts. It can more accurately predict time-to-default and provide financial institutions and investors better decision-support in granting loans and selecting loan portfolios.
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来源期刊
Mis Quarterly
Mis Quarterly 工程技术-计算机:信息系统
CiteScore
13.30
自引率
4.10%
发文量
36
审稿时长
6-12 weeks
期刊介绍: Journal Name: MIS Quarterly Editorial Objective: The editorial objective of MIS Quarterly is focused on: Enhancing and communicating knowledge related to: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Addressing professional issues affecting the Information Systems (IS) field as a whole Key Focus Areas: Development of IT-based services Management of IT resources Use, impact, and economics of IT with managerial, organizational, and societal implications Professional issues affecting the IS field as a whole
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