We aim to provide a predictive model, specifically designed for the Italian economy, which classifies solvent and insolvent firms one year in advance, using AIDA Bureau van Dijk dataset from 2007 to 2015. We apply a full battery of bankruptcy forecasting models, including both traditional and more sophisticated machine learning techniques, and add to the financial ratios used in the literature a set of industrial/regional variables. We find that XGBoost is the best performer and that industrial/regional variables are important. Moreover, belonging to a district, having a high mark up and a greater market share diminish bankruptcy probability.
Machine Learning models for bankruptcy prediction in Italy: do industrial variables count? / Bragoli, Daniela; Ferretti, Camilla; Ganugi, Piero; Marseguerra, Giovanni. - (2019), pp. 3-41.
Machine Learning models for bankruptcy prediction in Italy: do industrial variables count?
Ganugi, Piero;Marseguerra, Giovanni
2019-01-01
Abstract
We aim to provide a predictive model, specifically designed for the Italian economy, which classifies solvent and insolvent firms one year in advance, using AIDA Bureau van Dijk dataset from 2007 to 2015. We apply a full battery of bankruptcy forecasting models, including both traditional and more sophisticated machine learning techniques, and add to the financial ratios used in the literature a set of industrial/regional variables. We find that XGBoost is the best performer and that industrial/regional variables are important. Moreover, belonging to a district, having a high mark up and a greater market share diminish bankruptcy probability.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.