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Bootstrap score tests for fractional integration in heteroskedastic ARFIMA models, with an application to price dynamics in commodity spot and futures markets

机译:用于在异方差ARFIMA模型中进行分数积分的Bootstrap分数测试,并应用于商品现货和期货市场的价格动态

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摘要

© 2015 Elsevier B.V. All rights reserved. Empirical evidence from time series methods which assume the usual I(0)/I(1) paradigm suggests that the efficient market hypothesis, stating that spot and futures prices of a commodity should co-integrate with a unit slope on futures prices, does not hold. However, these statistical methods are known to be unreliable if the data are fractionally integrated. Moreover, spot and futures price data tend to display clear patterns of time-varying volatility which also has the potential to invalidate the use of these methods. Using new tests constructed within a more general heteroskedastic fractionally integrated model we are able to find a body of evidence in support of the efficient market hypothesis for a number of commodities. Our new tests are wild bootstrap implementations of score-based tests for the order of integration of a fractionally integrated time series. These tests are designed to be robust to both conditional and unconditional heteroskedasticity of a quite general and unknown form in the shocks. We show that the asymptotic tests do not admit pivotal asymptotic null distributions in the presence of heteroskedasticity, but that the corresponding tests based on the wild bootstrap principle do. A Monte Carlo simulation study demonstrates that very significant improvements in finite sample behaviour can be obtained by the bootstrap vis-à-vis the corresponding asymptotic tests in both heteroskedastic and homoskedastic environments.
机译:©2015 Elsevier B.V.保留所有权利。时间序列方法的经验证据假设通常的I(0)/ I(1)范式表明,有效的市场假设表明商品的现货和期货价格应与期货价格的单位斜率协整,而不是保持。但是,如果对数据进行部分积分,则这些统计方法将是不可靠的。此外,现货和期货价格数据倾向于显示清晰的时变波动模式,这也可能使这些方法的使用无效。使用在更通用的异方差分数集成模型中构建的新检验,我们能够找到大量证据来支持许多商品的有效市场假设。我们的新测试是基于分数测试的通用引导程序实现,用于分数集成时间序列的积分顺序。这些测试旨在对冲击中非常普遍和未知形式的有条件和无条件异方差具有鲁棒性。我们表明,在存在异方差的情况下,渐近检验不接受关键的渐近零分布,但是基于野生自举原理的相应检验确实可以。蒙特卡洛模拟研究表明,相对于异方差和同方差环境中的相应渐近测试,自举相对于相应的渐近测试,可以在有限样本行为方面取得非常显着的改善。

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