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机器学习在企业违约风险中的应用:多期预测、脆弱性相关性、贷款组合与尾部概率

Machine learning for corporate default risk: Multi-period prediction, frailty correlation, loan portfolios, and tail probabilities

European Journal of Operational Research · 2022
被引 52 · 同刊同年前 10%
ABS 4

中文导读

研究将树提升与潜在脆弱性模型结合,提出混合计量-机器学习模型,发现机器学习在多期违约预测中精度更高,且脆弱性成分随时间变化显著。

Abstract

We model multi-period cumulative and forward corporate default probabilities using machine learning methods and introduce a novel hybrid econometric-machine learning model which combines tree-boosting with a latent frailty model. The latter allows for modeling correlation that is not accounted for by observable predictor variables. We find that machine learning methods have higher prediction accuracy compared to linear models with the differences being larger for longer prediction horizons. The likely reason for this is the presence of stronger interaction effects for longer prediction horizons compared to short horizons. Among all methods, tree-boosting has the highest prediction accuracy. Further, the frailty component of the newly proposed “LaGaBoost frailty model” is overall large and exhibits strong variation over time. In contrast to prior research, we find that upper tail predictions of loan portfolio losses of frailty models are not consistently higher throughout time compared to models ignoring frailty correlation, but they show more temporal variation.

机器学习企业违约风险计量经济学金融经济学贷款组合