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An autoregressive approach to modeling commodity prices as a quasi-fractional Brownian motion

机译:一种将商品价格建模为准分数布朗运动的自回归方法

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Purpose - The purpose of this paper is to argue that a stationary-differenced autoregressive (AR) process with lag greater than 1, AR(q > 1), has certain properties that are consistent with a fractional Brownian motion (fBm). What the authors are interested in is the investigation of approaches to identifying the existence of persistent memory of one form or another for the purposes of simulating commodity (and other asset) prices. The authors show in theory, and with application to agricultural commodity prices the relationship between AR(q) and quasi-ffim.Design/methodology/approach - In this paper the authors develop mathematical relationships in support of using AR( 1) processes for simulating quasi-ffim.Findings - From theory the authors show that any AR(q) process is a stationary, self-similar process, with a lag structure that captures the essential elements of scaling and a fractional power law. The authors illustrate through various means the approach, and apply the quasi-fractional AR(q) process to agricultural commodity prices.Research limitations/implications - While the results can be applied to most time series of commodity prices, the authors limit the evaluation to the Gaussian case. Thus the approach does not apply to infinite-variance models.Practical implications - The approach to using the structure of an ARfe > 1) model to simulate quasi-ffim is a simple approach that can be applied with ease using conventional Monte Carlo methods. Originality/value - The authors believe that the approachto simulating quasi-ffim using standard AR(<7 > 1) models is original. The approach is intuitive and can be applied easily.
机译:目的-本文的目的是证明滞后大于1,AR(q> 1)的平稳差分自回归(AR)过程具有与分数布朗运动(fBm)一致的某些属性。作者感兴趣的是,为了模拟商品(和其他资产)价格,对识别一种或另一种形式的持久性记忆存在的方法进行研究。作者在理论上证明了AR(q)与准假象之间的关系,并将其应用于农产品价格。设计/方法论/方法-本文作者建立了数学关系以支持使用AR(<?> 1)结果-作者从理论上表明,任何AR(q)过程都是固定的,自相似过程,其滞后结构捕获了缩放的基本要素和分数幂定律。作者通过各种方式说明了该方法,并将准分数AR(q)过程应用于农产品价格。研究局限/含义-虽然结果可应用于大多数商品价格时间序列,但作者将评估限于高斯案。因此,该方法不适用于无限方差模型。实际意义-使用ARfe> 1)模型的结构来模拟准仿射的方法是一种简单的方法,可以使用常规的Monte Carlo方法轻松地应用。原创性/价值-作者认为使用标准AR(<7> 1)模型来模拟准仿射的方法是原创的。该方法是直观的并且可以容易地应用。

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