I modelli predittivi della crisi e dell’insolvenza aziendale. Una systematic review

Titolo Rivista MANAGEMENT CONTROL
Autori/Curatori Luca Ianni, Gianluca Marullo, Stefania Migliori, Francesco De Luca
Anno di pubblicazione 2021 Fascicolo 2021/2 Lingua Italiano
Numero pagine 20 P. 127-146 Dimensione file 299 KB
DOI 10.3280/MACO2021-002007
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Keywords:Business crisis, Insolvency, Literature review, Financial distress, Predicting models.

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Luca Ianni, Gianluca Marullo, Stefania Migliori, Francesco De Luca, I modelli predittivi della crisi e dell’insolvenza aziendale. Una systematic review in "MANAGEMENT CONTROL" 2/2021, pp 127-146, DOI: 10.3280/MACO2021-002007