Exploring the resilience of crude oil market via nonlinear dynamics and wavelet-based analysis: an international experience

Emmanuel Senyo Fianu
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引用次数: 1

Abstract

This paper investigates a signal modality analysis for the characterisation and detection of nonlinearity in crude oil markets. Given the nonlinear and time-varying characteristics of international crude oil prices, this study employs the recently proposed delay vector variance (DVV) method that examines local predictability of a signal in the phase space to detect the determinism and nonlinearity in a time series. In addition, wavelet transforms, which have recently emerged as a mathematical tool for multi-resolution decomposition of signals, is utilised. In particular, among the wavelet methodologies considered, the complex Morlet wavelet is useful and best at detecting the various phases of oil prices through the trajectory of market developments. The findings of this paper highlight the significant phases of the series and its relation to real-world phenomena with an indication of early warning signals of future significant events, thereby providing a guide for proper decision making and risk management practices of market participants.
通过非线性动力学和基于小波的分析来探索原油市场的弹性:国际经验
本文研究了原油市场非线性特征和检测的信号模态分析。鉴于国际原油价格的非线性和时变特征,本研究采用了最近提出的延迟向量方差(DVV)方法,该方法通过检测信号在相空间中的局部可预测性来检测时间序列中的确定性和非线性。此外,小波变换,这是最近出现的多分辨率信号分解的数学工具,被利用。特别是,在考虑的小波方法中,复杂的Morlet小波在通过市场发展轨迹检测油价的各个阶段方面是有用的,并且是最好的。本文的研究结果强调了该系列的重要阶段及其与现实世界现象的关系,并指出了未来重大事件的早期预警信号,从而为市场参与者的正确决策和风险管理实践提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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