Predicting crude oil future price using traditional and artificial intelligence-based model : comparative analysis
Year of publication: |
2023
|
---|---|
Authors: | Kadam, Sanjeev ; Agrawal, Anshul ; Bajaj, Aryan ; Agarwal, Rachit ; Kalra, Rameesha ; Shah, Jaymin |
Published in: |
Journal of international commerce, economics and policy. - Hackensack, NJ [u.a.] : World Scientific, ISSN 1793-9941, ZDB-ID 2572311-X. - Vol. 14.2023, 3, Art.-No. 2350014, p. 1-15
|
Subject: | ALSTM | ARIMA | Artificial intelligence | crude oil | forecast | RNN-LSTM | Prognoseverfahren | Forecasting model | Künstliche Intelligenz | Ölpreis | Oil price | Rohstoffderivat | Commodity derivative | Erdöl | Petroleum | Prognose | Forecast |
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