Interpreting the prediction results of the tree-based gradient boosting models for financial distress prediction with an explainable machine learning approach
Year of publication: |
2023
|
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Authors: | Liu, Jiaming ; Li, Chengzhang ; Ouyang, Peng ; Liu, Jiajia ; Wu, Chong |
Published in: |
Journal of forecasting. - New York, NY : Wiley Interscience, ISSN 1099-131X, ZDB-ID 2001645-1. - Vol. 42.2023, 5, p. 1112-1137
|
Subject: | data mining | explainable machine learning | financial distress prediction | tree-based gradient boosting models | Prognoseverfahren | Forecasting model | Insolvenz | Insolvency | Data Mining | Data mining | Künstliche Intelligenz | Artificial intelligence | Neuronale Netze | Neural networks |
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