The role of higher moments in predicting China's oil futures volatility : evidence from machine learning models
Year of publication: |
2023
|
---|---|
Authors: | Zhang, Hongwei ; Zhao, Xinyi ; Gao, Wang ; Niu, Zibo |
Published in: |
Journal of commodity markets. - Amsterdam : Elsevier, ISSN 2405-8513, ZDB-ID 3067450-5. - Vol. 32.2023, p. 1-27
|
Subject: | China's oil futures | COVID-19 | Higher-order moments | Machine learning | Combination forecasting | China | Künstliche Intelligenz | Artificial intelligence | Prognoseverfahren | Forecasting model | Volatilität | Volatility | Coronavirus | Prognose | Forecast | Rohstoffderivat | Commodity derivative | ARCH-Modell | ARCH model |
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