A comparison of different Machine Learning algorithms for predicting the length of hospital stay for pediatric patients
Ylenia Colella(University of Naples Federico II), Maria Romano(University of Naples Federico II), Chiara Lauri(Azienda Ospedaliera Sant'Andrea), Cristiana Giglio(Sapienza University of Rome), Anna Borrelli(Federico II University Hospital), Alfonso Maria Ponsiglione(Federico II University Hospital), Francesco Amato, Andrea Lombardi(Ospedali Riuniti San Giovanni di Dio e Ruggi d'Aragona)
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