Nonlinearity in Global Crude Oil Benchmarks: Disentangling the Effect of Time Aggregation

IF 1.2 Q3 BUSINESS, FINANCE
George Varghese, V. Madhavan
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引用次数: 0

Abstract

We model the first and second moments of global crude oil benchmarks, using iterative pre-whitened generalized autoregressive conditional heteroskedasticity (GARCH) models and, in doing so, validate the efficacy of such models in assimilating the neglected nonlinearities in the underlying data-generating processes. The benchmarks considered for this study are Brent, Dubai/Oman, and West Texas Intermediate (WTI) crude oil. While nonlinear serial dependence happens to be a stylized fact across different asset classes, it is our view that prior scholarly contributions have not adequately untangled the effect of data aggregation (in time) in the examination of nonlinear dependencies. In this context, the present study strives to untangle the critical role that time aggregation plays in the examination of nonlinearity in global crude oil benchmarks using data at daily, weekly as well as monthly time frequencies. Our findings are as follows: the optimum GARCH models perform well in capturing all of the neglected nonlinearity in monthly returns of the crude benchmarks. When it comes to daily and weekly returns, our study reveals traces of neglected nonlinearities that are not completely captured by GARCH models. Moreover, such residual traces of neglected nonlinear dependencies are relatively more pronounced at the granular levels and become more and more elusory as the data get aggregated in time. JEL Codes: C22, C53, C58, G1, Q47
全球原油基准的非线性:时间聚集效应的纠缠
我们使用迭代预白化广义自回归条件异方差(GARCH)模型对全球原油基准的一阶和二阶矩进行建模,并在这样做的过程中验证了这些模型在同化潜在数据生成过程中被忽视的非线性方面的有效性。本研究考虑的基准是布伦特原油、迪拜/阿曼原油和西德克萨斯中质原油。虽然非线性序列依赖性恰好是不同资产类别之间的一个程式化事实,但我们认为,先前的学术贡献在研究非线性依赖性时没有充分解决数据聚合(及时)的影响。在这种情况下,本研究试图利用每日、每周和每月的时间频率数据,阐明时间聚合在检查全球原油基准的非线性方面所起的关键作用。我们的研究结果如下:最优GARCH模型在捕捉原油基准月收益中所有被忽视的非线性方面表现良好。当涉及到每日和每周回报时,我们的研究揭示了GARCH模型没有完全捕捉到的被忽视的非线性的痕迹。此外,这种被忽视的非线性依赖性的残余痕迹在粒度级别上相对更明显,并且随着数据的及时聚合,变得越来越难以捉摸。JEL代码:C22、C53、C58、G1、Q47
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来源期刊
CiteScore
1.80
自引率
33.30%
发文量
19
期刊介绍: The Journal of Emerging Market Finance is a forum for debate and discussion on the theory and practice of finance in emerging markets. While the emphasis is on articles that are of practical significance, the journal also covers theoretical and conceptual aspects relating to emerging financial markets. Peer-reviewed, the journal is equally useful to practitioners and to banking and investment companies as to scholars.
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