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预测企业前瞻违约概率:带有企业特异性脆弱性的离散时间前瞻风险模型

Predicting forward default probabilities of firms: a discrete-time forward hazard model with firm-specific frailty

Quantitative Finance · 2024
被引 0
人大 BABS 3

中文导读

提出一种离散时间前瞻风险模型,通过引入企业特异性脆弱性变量,更准确地预测企业未来违约概率,实证表明该模型优于传统方法。

Abstract

Predicting the corporate default probability accurately is the core of credit risk management. There has been a relatively small amount of the literature on predicting a firm’s forward default risk. In particular, we wish to emphasize certain features of the panel data that are often overlooked in the analysis of default forecasting. First, the panel data are observed at discrete-time points with a large unit of time such as month, quarter, or year. Second, repeated survival status outcomes from the same firm are highly correlated. Thus, the continuous-time treatment or an independence assumption is often violated in practice. To avoid these potential drawbacks, we propose an extension of the discrete-time forward hazard model by assigning a frailty variable specifically to each firm. We use a real panel dataset to illustrate the proposed methodology. Using the dataset, our results first support the significance of including the firm-specific frailty variable in the extended model. Then, using an expanding rolling window approach, our results confirm that the extended model provides better and more robust out-of-sample performance than its alternative without frailty. Thus, accounting for firm-specific frailty can consistently yield more accurate predictions of firms’ forward default probabilities.

信用风险计量经济学风险管理金融经济学