Utilizza questo identificativo per citare o creare un link a questo documento: http://elea.unisa.it/xmlui/handle/10556/7308
Titolo: Statistical Learning for business decision making: from big data to informative data
Autore: Colosimo, Ivan
Amendola, Alessandra
La Rocca, Michele
Parole chiave: Informative Data;Big data application
Data: 16-lug-2023
Editore: Universita degli studi di Salerno
Abstract: First, I would like to express my gratitude to my principal supervisor, Professor Michele La Rocca, for his continuous support and invaluable guidance throughout my executive doctoral study. It has been an immense privilege to be able to embark on this doctoral journey several years after completing my master's thesis. I finished my undergraduate studies in 2008 and never thought I would venture on this path 10 years later, moreover with a responsible job that occupies entire days (sometimes even weekends). If I managed to make it all coincide, I owe it to Prof. Michele La Rocca. Special thanks to Professor Maria Teresa Cuomo, who was also invaluable and indispensable for the publications we were able to produce, for her support on the topics more related to marketing, and for providing the working group with her network of knowledge that enabled me to produce the scientific publications. Thanks to Lorenzo Ricciardi Celsi, a colleague and friend who perhaps unintentionally was an incentive to emulate him. I would like to thank my wife for the stimulus to throw myself into this adventure, for spending many moments together at home, and for not making me burdened by the fact that we could have gone out instead of staying home to study. For standing by me in life. A final thanks to Roberto Sorrenti (my Manager) over the years of working at the ELIS Center. Without him, a PhD path did not exist in my mind. [edited by Author]
Descrizione: 2021 - 2022
URI: http://elea.unisa.it/xmlui/handle/10556/7308
È visualizzato nelle collezioni:Economia e politiche dei mercati e delle imprese

File in questo documento:
File Descrizione DimensioniFormato 
tesi di dottorato I. Colosimo.pdftesi di dottorato2,86 MBAdobe PDFVisualizza/apri
abstract in inglese I. Colosimo.pdfabstract a cura dell’autore (versione inglese)81,85 kBAdobe PDFVisualizza/apri


Tutti i documenti archiviati in DSpace sono protetti da copyright. Tutti i diritti riservati.