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Time scale and f ractionality in financial time series

机译:金融时间序列中的时间标度和分数

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Purpose - Turvey (2007, Physica A) introduced a scaled variance ratio procedure for testing the random walk hypothesis (RWH) for financial time series by estimating Hurst coefficients for a fractional Brownian motion model of asset prices. The purposeof this paper is to extend his work by making the estimation procedure robust to heteroskedasticity and by addressing the multiple hypothesis testing problem.Design/methodology/approach - Unbiased, heteroskedasticity consistent, variance ratio estimates are calculated for end of day price data for eight time lags over 12 agricultural commodity futures (front month) and 40 US equities from 2000-2014. A bootstrapped stepdown procedure is used to obtain appropriate statistical confidence for the multiplicity of hypothesis tests. The variance ratio approach is compared against regression-based testing for fractionality.Findings - Failing to account for bias, heteroskedasticity, and multiplicity of testing can lead to large numbers of erroneous rejections of the null hypothesis of efficient markets following an independent random walk. Even with these adjustments, a fewfutures contracts significantly violate independence for short lags at the 99 percent level, and a number of equities/lags violate independence at the 95 percent level. When testing at the asset level, futures prices are found not to contain fractionalproperties, while some equities do.Research limitations/implications - Only a subsample of futures and equities, and only a limited number of lags, are evaluated. It is possible that multiplicity adjustments for larger numbers of tests would result in fewer rejections of independence.Originality/value - This paper provides empirical evidence that violations of the RWH for financial time series are likely to exist, but are perhaps less common than previously thought.
机译:目的-Turvey(2007,Physica A)引入了一种按比例变化的比例程序,通过估计资产价格的分数布朗运动模型的赫斯特系数来测试金融时间序列的随机游走假设(RWH)。本文的目的是通过使估计程序对异方差稳健并解决多重假设检验问题来扩展他的工作。设计/方法/方法-为八个月末的价格数据计算无偏,异方差一致,方差比估计从2000年到2014年,时间间隔超过12种农产品期货(前月)和40种美国股票。自举式降压过程用于为多种假设检验获得适当的统计置信度。将方差比方法与基于分数的回归测试进行比较。发现-如果没有考虑偏差,异方差和多重测试,可能会导致在独立随机游走后大量拒绝有效市场的零假设。即使进行了这些调整,仍有少数期货合约在99%的水平上严重违反了独立性,而一些股票/滞后在95%的水平上违反了独立性。在资产级别进行测试时,发现期货价格不包含分数属性,而某些股票却包含。研究限制/含义-仅对期货和股票的子样本进行评估,并且仅对有限的滞后进行评估。大量测试的多重性调整可能会导致更少的独立性被拒绝。原始数据/价值-本文提供了经验证据,表明可能存在违反财务时间序列的RWH的情况,但可能比以前认为的少。

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