Priestley Jennifer Lewis, VonDohlen Eric
Flock Specialty Finance, Data Science and Risk Management, Atlanta, GA, USA.
J Appl Stat. 2024 Jan 9;51(12):2481-2488. doi: 10.1080/02664763.2024.2302058. eCollection 2024.
Researchers and practitioners in financial services utilize a wide range of empirical techniques to assess risk and value. In cases where known performance is used to predict future performance of a new asset, the risk of bias is present when samples are uncontrolled by the analyst. Propensity score matching is a statistical methodology commonly used in medical and social science research to address issues related to experimental design when random assignment of cases is not possible. This common method has been almost absent from financial risk modeling and portfolio underwriting, primarily due to the different objectives for this sector relative to medicine and social sciences. In this application note, we demonstrate how propensity score matching can be considered as a practical tool to inform portfolio underwriting outside of experimental design. Using a portfolio of distressed consumer credit accounts, we demonstrate that propensity score matching can be used to predict both account-level and portfolio-level risk and argue that propensity score matching should be included in the methodological toolbox of researchers and practitioners engaged in risk modeling and valuation activities of portfolios of consumer assets, particularly in contexts with limited observations, a large number of potential modeling features, or highly imbalanced covariates.
金融服务领域的研究人员和从业者运用多种实证技术来评估风险和价值。在利用已知绩效来预测新资产未来绩效的情况下,若样本未受分析师控制,则存在偏差风险。倾向得分匹配是医学和社会科学研究中常用的一种统计方法,用于解决无法对案例进行随机分配时与实验设计相关的问题。这种常用方法在金融风险建模和投资组合承保中几乎未被使用,主要是因为该领域相对于医学和社会科学有不同的目标。在本应用说明中,我们展示了倾向得分匹配如何可被视为一种实用工具,为实验设计之外的投资组合承保提供参考。通过一个不良消费者信贷账户组合,我们证明倾向得分匹配可用于预测账户层面和投资组合层面的风险,并认为倾向得分匹配应纳入从事消费者资产投资组合风险建模和估值活动的研究人员和从业者的方法工具箱中,特别是在观察结果有限、潜在建模特征众多或协变量高度不平衡的情况下。