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新冠疫情、贵金属和石油价格收益间的混沌结构和传染行为:MS-GARCH-MLP Copula。

Chaos Structure and Contagion Behavior between COVID-19, and the Returns of Prices of Precious Metals and Oil: MS-GARCH-MLP Copula.

机构信息

Yildiz Technical University, Istanbul, Turkey.

出版信息

Nonlinear Dynamics Psychol Life Sci. 2022 Apr;26(2):209-230.

PMID:35366223
Abstract

This study was developed for two purposes. The first one is detection of the existence of chaotic structure and uncertainty behaviour of the total number of people infected with the COVID-19 outbreak, and the returns of precious metals and oil by using the Lyapunov exponent, Kolmogrov and Shannon entropy tests. The additional aim was to analyze the co-movement and contagion behavior among COVID-19 infected persons, returns of precious metals and oil for the period of between December 30, 2019 and October 26, 2020 by MSGARCH-copula and MSGARCH-multi-layer perceptron methods. Confirmation of the results was provided by using the Diebold-Mariano (DM) tests and Wilcoxon signed rank (WS) tests. Accordingly, the empirical findings of this paper are as follows: The presence of chaotic structure and uncertainty behavior in the variables were determined by Lyapunov exponent, Kolmogorov and Shannon entropy tests. Additionally, co-movement and contagion behavior among the analyzed variables was established by the MS-GARCH-MLP copula method. Following, in the context of the results of confirmation, it has been determined that MSGARCH-MLPst has the best prediction performance under all criteria compared to MSGARCHst, or GARCHst. As a further result, COVID-19 had considerable effects on the returns of precious metals and oil prices, and there was co-movement and contagion behavior between COVID-19 and the returns of precious metals and oil.

摘要

本研究旨在实现两个目的。第一个目的是通过使用 Lyapunov 指数、Kolmogorov 和 Shannon 熵检验来检测 COVID-19 爆发感染总人数、贵金属和石油收益的混沌结构和不确定性行为的存在。第二个目的是分析 2019 年 12 月 30 日至 2020 年 10 月 26 日期间 COVID-19 感染者、贵金属和石油收益之间的共同运动和传染行为,使用 MSGARCH-copula 和 MSGARCH-多层感知器方法。通过使用 Diebold-Mariano(DM)检验和 Wilcoxon 符号秩(WS)检验对结果进行了验证。因此,本文的实证结果如下:通过 Lyapunov 指数、Kolmogorov 和 Shannon 熵检验确定了变量中存在混沌结构和不确定性行为。此外,通过 MS-GARCH-MLP Copula 方法确定了分析变量之间的共同运动和传染行为。随后,根据验证结果,与 MSGARCHst 或 GARCHst 相比,MSGARCH-MLPst 在所有标准下均具有最佳的预测性能。进一步的结果表明,COVID-19 对贵金属和石油价格的收益产生了相当大的影响,并且 COVID-19 与贵金属和石油收益之间存在共同运动和传染行为。

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