Novel time slicing approach for customer defection models in e-commerce: a case study

Data Science and Management - Tập 5 - Trang 149-162 - 2022
Kyriakos Georgiou1,2, Alexandros Chasapis1
1Data Science Department, Finloup S.A., 2 Evristheos, 118 54, Athens, Greece
2Department of Statistics and Stochastic Modeling and Applications Laboratory, Athens University of Economics and Business, 6 Patission Str, 104 34, Athens, Greece

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