1. bookTom 12 (2021): Zeszyt 2 (April 2021)
Informacje o czasopiśmie
Pierwsze wydanie
30 Dec 2014
Częstotliwość wydawania
4 razy w roku
Otwarty dostęp

Machine Learning and Traditional Econometric Models: A Systematic Mapping Study

Data publikacji: 23 Feb 2022
Tom & Zeszyt: Tom 12 (2021) - Zeszyt 2 (April 2021)
Zakres stron: 79 - 100
Otrzymano: 14 Jul 2021
Przyjęty: 15 Sep 2021
Informacje o czasopiśmie
Pierwsze wydanie
30 Dec 2014
Częstotliwość wydawania
4 razy w roku

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