EU-27 bank failure prediction with C5.0 decision trees and deep learning neural networks

Research in International Business and Finance - Tập 61 - Trang 101644 - 2022
Tamás Kristóf1, Miklós Virág1
1Institute for the Development of Enterprises Corvinus University of Budapest, Fővám tér 8, H-1093 Budapest, Hungary

Tài liệu tham khảo

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