A machine learning approach in stress testing US bank holding companies

IF 7.5 1区 经济学 Q1 BUSINESS, FINANCE International Review of Financial Analysis Pub Date : 2024-07-25 DOI:10.1016/j.irfa.2024.103476
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Abstract

This paper assesses the utility of machine learning (ML) techniques combined with comprehensive macroeconomic and microeconomic datasets in enhancing risk analysis during stress tests. The analysis unfolds in two stages. I initially benchmark ML’s efficacy in forecasting two pivotal banking variables, net charge-off (NCO) and pre-provision net revenue (PPNR), against traditional linear models. Results underscore the superiority of Random Forest and Adaptive Lasso models in this context. Subsequently, I use these models to project PPNR and NCO for selected bank holding companies under adverse stress scenarios. This exercise feeds into the Tier 1 common equity capital (T1CR) densities simulation. T1CR is the equity capital ratio corrected by some regulatory adjustments to risk-weighted assets. Crucially, findings reveal a pronounced left skew in the T1CR distribution for globally systemically important banks vis-à-vis linear models. By mirroring distress akin to the Great Recession, ML models elucidate intricate macro-financial linkages and enhance risk assessment in downturns.

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美国银行控股公司压力测试中的机器学习方法
本文评估了机器学习(ML)技术与全面的宏观经济和微观经济数据集相结合,在压力测试期间加强风险分析的效用。分析分两个阶段进行。首先,我对照传统的线性模型,对机器学习在预测两个关键银行变量--净冲销(NCO)和拨备前净收入(PPNR)--方面的功效进行了基准测试。结果凸显了随机森林模型和自适应套索模型在这方面的优势。随后,我使用这些模型预测了不利压力情景下选定银行控股公司的 PPNR 和 NCO。这项工作可用于一级普通股资本(T1CR)密度模拟。T1CR 是通过对风险加权资产进行某些监管调整而修正的权益资本比率。至关重要的是,研究结果显示,与线性模型相比,全球系统重要性银行的 T1CR 分布明显左倾。通过反映类似于大衰退的困境,ML 模型阐明了错综复杂的宏观金融联系,并加强了衰退期的风险评估。
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来源期刊
CiteScore
10.30
自引率
9.80%
发文量
366
期刊介绍: The International Review of Financial Analysis (IRFA) is an impartial refereed journal designed to serve as a platform for high-quality financial research. It welcomes a diverse range of financial research topics and maintains an unbiased selection process. While not limited to U.S.-centric subjects, IRFA, as its title suggests, is open to valuable research contributions from around the world.
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