Modelling of crude oil price data using hidden Markov model

IF 5.7 Q1 BUSINESS, FINANCE Journal of Risk Finance Pub Date : 2023-02-28 DOI:10.1108/jrf-07-2022-0184
Safaa. K. Kadhem, Haider Thajel
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Abstract

PurposeOne of the most important sources of energy in the world, due to its great impact on the global economy, is the crude oil. Due to the instability of oil prices which exhibit extreme fluctuations during periods of different times of market uncertainty, it became hard to the governments to predict accurately the prices of crude oil in order to build their financial budgets. Therefore, this study aims to analyse and model crude oil price using the hidden Markov process (HMM).Design/methodology/approachTraditional mathematical approaches of time series may be not give accurate results to measure and analyse the crude oil price, since the latter has an unstable and fluctuating nature, hence, its prediction forms a challenge task. A novel methodology that is so-called the HMM is proposed that takes into account the heterogeneity in prices as well as their hidden state-based behaviour.FindingsUsing the Bayesian approach, several estimated models with different ranks are fitted to a non-homogeneous data of Iraqi crude oil prices from January 2010 into December 2021. The model selection criteria and measures of the prediction performance of each model are applied to choose the best model. Movements of crude oil prices exhibit extreme fluctuations during periods of different times of market uncertainty. The processes of model estimation and the model selection were conducted in Python V.3.10, and it is available from the first author on request.Originality/valueUsing the Bayesian approach, several estimated models with different ranks are fitted to a non-homogeneous data of Iraqi crude oil prices from January 2010 to December 2021.
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原油价格数据的隐马尔可夫模型建模
原油是世界上最重要的能源之一,由于其对全球经济的巨大影响。由于石油价格的不稳定性,在不同的市场不确定时期会出现剧烈的波动,因此政府很难准确预测原油价格以建立财政预算。因此,本研究旨在利用隐马尔可夫过程(HMM)对原油价格进行分析和建模。设计/方法/方法传统的时间序列数学方法可能无法给出准确的结果来测量和分析原油价格,因为后者具有不稳定和波动的性质,因此,其预测是一项具有挑战性的任务。提出了一种新的方法,即所谓的HMM,它考虑了价格的异质性以及它们隐藏的基于状态的行为。使用贝叶斯方法,对2010年1月至2021年12月伊拉克原油价格的非均匀数据进行了几种不同等级的估计模型拟合。利用模型选择准则和各模型预测性能的度量来选择最佳模型。原油价格的变动在市场不确定的不同时期表现出极大的波动。模型估计和模型选择的过程是在Python V.3.10中进行的,可以向第一作者索取。使用贝叶斯方法,对2010年1月至2021年12月伊拉克原油价格的非均匀数据进行了几种不同等级的估计模型拟合。
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来源期刊
Journal of Risk Finance
Journal of Risk Finance BUSINESS, FINANCE-
CiteScore
6.20
自引率
6.70%
发文量
37
期刊介绍: The Journal of Risk Finance provides a rigorous forum for the publication of high quality peer-reviewed theoretical and empirical research articles, by both academic and industry experts, related to financial risks and risk management. Articles, including review articles, empirical and conceptual, which display thoughtful, accurate research and be rigorous in all regards, are most welcome on the following topics: -Securitization; derivatives and structured financial products -Financial risk management -Regulation of risk management -Risk and corporate governance -Liability management -Systemic risk -Cryptocurrency and risk management -Credit arbitrage methods -Corporate social responsibility and risk management -Enterprise risk management -FinTech and risk -Insurtech -Regtech -Blockchain and risk -Climate change and risk
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