论文标题
基于宏观经济变化的损失率预测框架:应用于美国信用卡行业
Loss Rate Forecasting Framework Based on Macroeconomic Changes: Application to US Credit Card Industry
论文作者
论文摘要
美国最大银行的资产负债表的主要部分是信用卡投资组合。因此,管理收费率是信用卡行业盈利能力的重要任务。不同的宏观经济状况会影响个人在偿还债务时的行为。在本文中,我们建议使用宏观经济指标在信用卡行业中预测损失的专家系统。我们根据对文献和专家的意见进行详尽的审查,涵盖经济,消费者,商业和政府部门的各个方面的观点。最先进的机器学习模型用于开发提出的专家系统框架。我们开发了两个预测专家系统的版本,这些版本利用不同的方法在添加到每个指标的滞后之间进行选择。在用作输入的19个宏观经济指标中,在模型中使用了6个宏观经济指标,最佳滞后,使用所有滞后。这些模型中每个模型选择的功能涵盖了经济的所有三个领域。使用从1985年第一季度到2019年第二季度的资产排名的前100个银行的收费数据,我们使用具有最佳滞后的模型和所有滞后模型实现了平均平方误差值为1.15E-03和1.04E-03。拟议的专家系统向信用卡行业的从业者提供了对经济的整体看法,并帮助他们了解不同宏观经济条件对未来损失的影响。
A major part of the balance sheets of the largest US banks consists of credit card portfolios. Hence, managing the charge-off rates is a vital task for the profitability of the credit card industry. Different macroeconomic conditions affect individuals' behavior in paying down their debts. In this paper, we propose an expert system for loss forecasting in the credit card industry using macroeconomic indicators. We select the indicators based on a thorough review of the literature and experts' opinions covering all aspects of the economy, consumer, business, and government sectors. The state of the art machine learning models are used to develop the proposed expert system framework. We develop two versions of the forecasting expert system, which utilize different approaches to select between the lags added to each indicator. Among 19 macroeconomic indicators that were used as the input, six were used in the model with optimal lags, and seven indicators were selected by the model using all lags. The features that were selected by each of these models covered all three sectors of the economy. Using the charge-off data for the top 100 US banks ranked by assets from the first quarter of 1985 to the second quarter of 2019, we achieve mean squared error values of 1.15E-03 and 1.04E-03 using the model with optimal lags and the model with all lags, respectively. The proposed expert system gives a holistic view of the economy to the practitioners in the credit card industry and helps them to see the impact of different macroeconomic conditions on their future loss.