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Correlational and Non-extensive Nature of Carbon Dioxide Pricing Market

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dc.contributor.author Bielinskyi, Andrii O.
dc.contributor.author Matviychuk, Andriy V.
dc.contributor.author Serdyuk, Oleksandr A.
dc.contributor.author Семеріков, Сергій Олексійович
dc.contributor.author Solovieva, Victoria V.
dc.contributor.author Соловйов, Володимир Миколайович
dc.contributor.author Бєлінський, Андрій Олександрович
dc.contributor.author Матвійчук, Андрій Вікторович
dc.contributor.author Сердюк, О. А.
dc.contributor.author Соловйова, Вікторія Володимирівна
dc.date.accessioned 2023-01-04T10:07:28Z
dc.date.available 2023-01-04T10:07:28Z
dc.date.issued 2022-09-14
dc.identifier.citation Bielinskyi A. O. Correlational and Non-extensive Nature of Carbon Dioxide Pricing Market / Andrii O. Bielinskyi, Andriy V. Matviychuk, Oleksandr A. Serdyuk, Serhiy O. Semerikov, Victoria V. Solovieva, Vladimir N. Soloviev // ICTERI 2021 Workshops: ITER, MROL, RMSEBT, TheRMIT, UNLP 2021, Kherson, Ukraine, September 28–October 2, 2021, Proceedings / Editors : Oleksii Ignatenko, Vyacheslav Kharchenko, Vitaliy Kobets, Hennadiy Kravtsov, Yulia Tarasich, Vadim Ermolayev, David Esteban, Vitaliy Yakovyna, Aleksander Spivakovsky // Communications in Computer and Information Science. – Cham : Springer, 2022. – Vol. 1635. – P. 183–199. – DOI : 10.1007/978-3-031-14841-5_12 uk
dc.identifier.isbn 978-3-031-14840-8
dc.identifier.uri https://link.springer.com/chapter/10.1007/978-3-031-14841-5_12
dc.identifier.uri https://doi.org/10.1007/978-3-031-14841-5_12
dc.identifier.uri http://elibrary.kdpu.edu.ua/xmlui/handle/123456789/7028
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dc.description.abstract In this paper, at the first time, the analysis of correlational and non-extensive properties of the CO2 emission market relying on the carbon emissions futures time series for the period 04.07.2008–10.05.2021 is performed, and the daily data of the power sector from the U.S. Carbon Monitor for the period 01.01.2019–10.05.2021, which consist the data of both individual countries (USA, Germany, China, India, United Kingdom, et al.) and global emissions (World) are investigated using such approach. To demonstrate the applicability of these methods on systems of another nature and complexity, the analysis of the Dow Jones Industrial Average (DJIA) index is presented. The results show that both futures and the DJIA are presented to be non-extensive, and the distribution of their normalized returns can be better described by power-law probability distributions, particularly, by q-Gaussian. Tsallis triplet for the entire time series of CO2 emissions futures and the DJIA is estimated, and q-triplet as an indicator of crisis phenomena is presented, relying on the sliding window algorithm. It can be seen that the triplet behaves characteristically during economic crises. This study shows that the toolkit of the random matrix theory (RMT) allows to investigate the correlational nature of the carbon emissions market and to build appropriate indicators of crisis phenomena, which clearly reflect the collective dynamics of the entire research base during events of this kind. uk
dc.language.iso en uk
dc.publisher Springer, Cham uk
dc.subject carbon emissions uk
dc.subject Tsallis triplet uk
dc.subject random matrix theory uk
dc.subject correlations uk
dc.subject non-extensivity uk
dc.title Correlational and Non-extensive Nature of Carbon Dioxide Pricing Market uk
dc.type Book chapter uk


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