Models for predicting default: towards efficient forecasts

Author:

Castagnolo Fernando,Ferro Gustavo

Abstract

Purpose – The purpose of this paper is to assess and compare the forecast ability of existing credit risk models, answering three questions: Can these methods adequately predict default events? Are there dominant methods? Is it safer to rely on a mix of methodologies? Design/methodology/approach – The authors examine four existing models: O-score, Z-score, Campbell, and Merton distance to default model (MDDM). The authors compare their ability to forecast defaults using three techniques: intra-cohort analysis, power curves and discrete hazard rate models. Findings – The authors conclude that better predictions demand a mix of models containing accounting and market information. The authors found evidence of the O-score's outperformance relative to the other models. The MDDM alone in the sample is not a sufficient default predictor. But discrete hazard rate models suggest that combining both should enhance default prediction models. Research limitations/implications – The analysed methods alone cannot adequately predict defaults. The authors found no dominant methods. Instead, it would be advisable to rely on a mix of methodologies, which use complementary information. Practical implications – Better forecasts demand a mix of models containing both accounting and market information. Originality/value – The findings suggest that more precise default prediction models can be built by combining information from different sources in reduced-form models and combining default prediction models that can analyze said information.

Publisher

Emerald

Subject

Finance

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Planning for Fund Seekers’ Deception in Peer-to-Peer Lending;Journal of Economic Issues;2024-07-02

2. Irrational exuberance and deception — Why markets spin out of control;Journal of Behavioral and Experimental Finance;2023-03

3. A territorial perspective of SME’s default prediction models;Studies in Economics and Finance;2018-10-01

4. Default prediction using balance-sheet data: a comparison of models;The Journal of Risk Finance;2017-11-20

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