Supervised learning for the prediction of firm dynamics
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- Falco J. Bargagli Stoffi & Kenneth De Beckker & Joana E. Maldonado & Kristof De Witte, 2021. "Assessing Sensitivity of Machine Learning Predictions.A Novel Toolbox with an Application to Financial Literacy," Papers 2102.04382, arXiv.org.
- Falco J. Bargagli-Dtoffi & Massimo Riccaboni & Armando Rungi, 2020. "Machine Learning for Zombie Hunting. Firms Failures and Financial Constraints," Working Papers 01/2020, IMT School for Advanced Studies Lucca, revised Jun 2020.
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NEP fields
This paper has been announced in the following NEP Reports:- NEP-BEC-2020-10-05 (Business Economics)
- NEP-BIG-2020-10-05 (Big Data)
- NEP-CMP-2020-10-05 (Computational Economics)
- NEP-ENT-2020-10-05 (Entrepreneurship)
- NEP-FOR-2020-10-05 (Forecasting)
- NEP-INO-2020-10-05 (Innovation)
- NEP-SBM-2020-10-05 (Small Business Management)
- NEP-TID-2020-10-05 (Technology and Industrial Dynamics)
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