External publications
Quantile co-movement and dependence between energy-focused sectors and artificial intelligence
Urom, Christian / Gideon Ndubuisi / Khaled Guesmi / Ramzi BenkraienExternal Publications (2022)
in: Technological Forecasting and Social Change 183, article 121842
DOI: https://doi.org/10.1016/j.techfore.2022.121842
Information
This paper examines the dependence between Artificial Intelligence (AI) and eight energy-focused sectors (including renewable energy and coal) across different market conditions and investment horizons. This paper adopts both linear and non-linear models such as quantile regressions and quantile cross-spectral coherency models. Evidence from the linear model suggests that the performance of energy-focused corporations, especially those in the renewable energy sector depends strongly on the performance of AI. Results from the non-linear model indicate that dependence varies across both energy sectors, market conditions as well as investment horizons. By considering both negative and positive shocks on AI, we demonstrate that the dependence of energy corporations on AI also varies according to the direction of shocks on AI. Interestingly, negative and positive shocks on AI impact differently on the performance of energy corporations across different sectors and market conditions. Besides, we found that the dependence became stronger during the first wave of the COVID-19 pandemic. Our findings hold profound implications for portfolio managers and investors, who may be interested in holding the assets of AI and those of energy corporations.
Contact
Cornelia Hornschild
Publication Coordinator
E-mail Cornelia.Hornschild@idos-research.de
Phone +49 (0)228 94927-135
Fax +49 (0)228 94927-130
Alexandra Fante
Librarian/ Open Access Coordinator
E-Mail Alexandra.Fante@idos-research.de
Telefon +49 (0)228 94927-321
Fax +49 (0)228 94927-130