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A Novel Method for IPTV Customer Behavior Analysis Using Time Series 원문보기

IEEE access : practical research, open solutions, v.10, 2022년, pp.37003 - 37015  

Hlupic, Tomislav (Poslovna Inteligencija d. o. o, Zagreb, Croatia) ,  Orescanin, Drazen (Poslovna Inteligencija d. o. o, Zagreb, Croatia) ,  Baranovic, Mirta (Faculty of Electrical Engineering and Computing, University of Zagreb, Zagreb, Croatia)

초록이 없습니다.

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