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Keywords: Random forest
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Journal Articles
Corporate financial distress prediction: a machine learning approach in the era of big data
Open Access
Journal of Accounting & Organizational Change (2026) 22 (7): 31–65.
Published: 29 December 2025
...Gianluca Gabrielli; Andrea Melioli; Flavio Bertini Purpose This study aims to evaluate the efficacy of modern machine learning classifiers, random forest, gradient boosting trees, decision trees, support vector machines and logistic regression, in forecasting corporate bankruptcy among Italian...
