Corporate Financial Distress Prediction (FDP) has been a major concern for companies in the last years. Therefore, it has been deemed necessary to implement some techniques for predicting whether or not a firm will incur into financial distress on the basis of available financial data, through mathematical, statistical, or artificial intelligence-based models. This dissertation is aimed at comparing the outcome of a specific set of machine learning models, namely tree-based methods, with the performance of a benchmark technique to predict corporate failure, namely logistic regression, because of its widespread use in the literature.

Predicting short-term financial distress - An empirical comparison between Logistic Regression and Tree-based models applied to Italian companies

Zanotto, Jessica
2021/2022

Abstract

Corporate Financial Distress Prediction (FDP) has been a major concern for companies in the last years. Therefore, it has been deemed necessary to implement some techniques for predicting whether or not a firm will incur into financial distress on the basis of available financial data, through mathematical, statistical, or artificial intelligence-based models. This dissertation is aimed at comparing the outcome of a specific set of machine learning models, namely tree-based methods, with the performance of a benchmark technique to predict corporate failure, namely logistic regression, because of its widespread use in the literature.
2021-05-11
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14247/7142