1. bookVolume 5 (2014): Edizione 2 (June 2014)
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eISSN
1847-9375
Prima pubblicazione
19 Sep 2012
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2 volte all'anno
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Decision Tree Approach to Discovering Fraud in Leasing Agreements

Pubblicato online: 10 Sep 2014
Volume & Edizione: Volume 5 (2014) - Edizione 2 (June 2014)
Pagine: 61 - 71
Ricevuto: 21 Sep 2013
Accettato: 28 Mar 2014
Dettagli della rivista
License
Formato
Rivista
eISSN
1847-9375
Prima pubblicazione
19 Sep 2012
Frequenza di pubblicazione
2 volte all'anno
Lingue
Inglese

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