预测金融业零售客户的困境:预警系统方法

IF 11 1区 管理学 Q1 BUSINESS
Jaap Beltman, Marcos R. Machado, Joerg R. Osterrieder
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引用次数: 0

摘要

预测信贷违约对于金融机构评估风险和做出明智的借贷决策至关重要。银行和金融机构为尽量减少信贷违约造成的损失而测试的最新策略之一是部署预警系统(EWS)。从本质上讲,这种技术主要是针对商业客户提出和探索的。然而,本研究提出了一种全面的数据驱动方法,利用不同的机器学习(ML)模型为金融业零售客户的预警系统(EWS)建模。我们使用逻辑回归 (LR)、梯度提升 (GB) 和随机森林 (RF) 对客户的状态进行分类,指出是否需要将潜在违约列入 "观察名单"。此外,我们还实施了第四个模型(即元模型),其预测基于其他算法(LR、GB、RF)的输出。结果表明,元模型的准确率高于 GB 或其他任何单独测试的模型。从管理角度来看,研究结果表明,警告信号的阈值越高,警报越接近逾期日期,表明对新出现的客户情况恶化的敏感度越高。相反,较低的阈值则更关注客户的整体状况。此外,使用前十项特征进行培训会产生令人满意的总体结果,但将前十项特征以外的特征纳入其中可为决策过程提供有价值的补充信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting retail customers' distress in the finance industry: An early warning system approach
Predicting credit defaults is crucial for financial institutions to assess risk and make informed lending decisions. One of the most recent strategies banks and financial institutions have been testing to minimize losses that arise from credit default is the deployment of Early Warning Systems (EWS). By nature, this technique was primarily proposed and explored for commercial customers. However, this study proposes a comprehensive data-driven approach to model Early Warning Systems (EWS) for retail customers in the financial industry while using different Machine Learning (ML) models. We use Logistic Regression (LR), Gradient Boosting (GB), and Random Forest (RF) to classify customers' status, indicating the need to include potential default in a “watch list”. Additionally, we implement a fourth model (i.e., meta-model), whose predictions are based on the output of the other algorithms used (LR, GB, RF). Results indicate that the meta-model achieves higher accuracy than GB or any other individual model tested. From the management perspective, the findings indicate that a higher threshold for warning signals results in alerts closer to the overdue date, indicating increased sensitivity to emerging client deterioration. Conversely, lower thresholds focus more on the client's overall status. Furthermore, using the top ten features for training yields satisfactory overall results, but incorporating features beyond the top ten provides valuable supplementary information to be used in the decision-making process.
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来源期刊
CiteScore
20.40
自引率
14.40%
发文量
340
审稿时长
20 days
期刊介绍: The Journal of Retailing and Consumer Services is a prominent publication that serves as a platform for international and interdisciplinary research and discussions in the constantly evolving fields of retailing and services studies. With a specific emphasis on consumer behavior and policy and managerial decisions, the journal aims to foster contributions from academics encompassing diverse disciplines. The primary areas covered by the journal are: Retailing and the sale of goods The provision of consumer services, including transportation, tourism, and leisure.
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