Understanding and predicting systemic corporate distress : a machine-learning approach
Year of publication: |
2023
|
---|---|
Authors: | Hacibedel, Burcu ; Qu, Ritong |
Published in: |
The journal of credit risk : published quarterly by Incisive Media. - London : Infopro Digital, ZDB-ID 2446290-1. - Vol. 19.2023, 3, p. 79-116
|
Subject: | credit risk | probability of default | financial crises | early-warning system | machine learning | Finanzdienstleistung | Financial services | Finanzkrise | Financial crisis | Kreditrisiko | Credit risk | Insolvenz | Insolvency | Prognoseverfahren | Forecasting model | Frühwarnsystem | Early warning system |
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