The power of investors’ optimism and pessimism in oil market forecasting
The power of investors’ optimism and pessimism in oil market forecasting
By modelling dynamism in the global oil market by three essential market-centric observables (viz., Market Expansion, Market Regime, and Market Liquidity), we study forecasting potential of the future oil markets within a memory-driven interdependence setting. We combine spot prices with our derived market proxies to produce representative global market proxies. The latter are used to quantify the extent of static and dynamic persistence within the system. Our extensive empirical investigation exploits the rich features of fractionally cointegrated vector autoregression, where the rate of disequilibrium error correction within the system is modelled to be slow, approximating real life system dynamics. An advantage is that it explains why we often experience a slow response of a policy intervention. We present robust evidence of both system-wide long-memory and a long-memory in the market-centric observables. We introduce a memory of memory estimation to discern the magnitude of the relative rate of acceleration/deceleration of shocks within each observable, which reflects on the overall stability of the system. Our results show significant degree of non-linear error dissipation and high degree of informational inefficiency. Rigorous out-of-sample forecasting exercise produces robust predictions and demonstrate superiority of our approach.
Dynamic persistence, Energy markets, Fractional cointegrated VAR, Informational inefficiency, Market-centric observable, Oil futures markets, Oil price forecasting, System long memory
Mustanen, Dmitri
5bcb922f-d537-4c5c-a79a-ecb7570de927
Maaitah, Ahmad
7057414d-762b-49d8-9724-f6d9e1fffd09
Mishra, Tapas
218ef618-6b3e-471b-a686-15460da145e0
Parhi, Mamata
5e489f1d-9fe0-44b3-8027-bfa3ec6bfbd4
October 2022
Mustanen, Dmitri
5bcb922f-d537-4c5c-a79a-ecb7570de927
Maaitah, Ahmad
7057414d-762b-49d8-9724-f6d9e1fffd09
Mishra, Tapas
218ef618-6b3e-471b-a686-15460da145e0
Parhi, Mamata
5e489f1d-9fe0-44b3-8027-bfa3ec6bfbd4
Mustanen, Dmitri, Maaitah, Ahmad, Mishra, Tapas and Parhi, Mamata
(2022)
The power of investors’ optimism and pessimism in oil market forecasting.
Energy Economics, 114 (October 2022), [106273].
(doi:10.1016/j.eneco.2022.106273).
Abstract
By modelling dynamism in the global oil market by three essential market-centric observables (viz., Market Expansion, Market Regime, and Market Liquidity), we study forecasting potential of the future oil markets within a memory-driven interdependence setting. We combine spot prices with our derived market proxies to produce representative global market proxies. The latter are used to quantify the extent of static and dynamic persistence within the system. Our extensive empirical investigation exploits the rich features of fractionally cointegrated vector autoregression, where the rate of disequilibrium error correction within the system is modelled to be slow, approximating real life system dynamics. An advantage is that it explains why we often experience a slow response of a policy intervention. We present robust evidence of both system-wide long-memory and a long-memory in the market-centric observables. We introduce a memory of memory estimation to discern the magnitude of the relative rate of acceleration/deceleration of shocks within each observable, which reflects on the overall stability of the system. Our results show significant degree of non-linear error dissipation and high degree of informational inefficiency. Rigorous out-of-sample forecasting exercise produces robust predictions and demonstrate superiority of our approach.
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Accepted/In Press date: 21 August 2022
e-pub ahead of print date: 7 September 2022
Published date: October 2022
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Publisher Copyright:
© 2022 The Author(s)
Keywords:
Dynamic persistence, Energy markets, Fractional cointegrated VAR, Informational inefficiency, Market-centric observable, Oil futures markets, Oil price forecasting, System long memory
Identifiers
Local EPrints ID: 470188
URI: http://eprints.soton.ac.uk/id/eprint/470188
ISSN: 0140-9883
PURE UUID: 3e707e51-1f62-4fc2-bb2f-ba894b626e39
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Date deposited: 04 Oct 2022 16:45
Last modified: 06 Jun 2024 02:09
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Author:
Dmitri Mustanen
Author:
Mamata Parhi
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