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Long memory and long run variation

机译:长时间记忆和长期变化

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A commonly used defining property of long memory time series is the power law decay of the autocovariance function. Some alternative methods of deriving this property are considered, working from the alternate definition in terms of a fractional polein the spectrum at the origin. The methods considered involve the use of (i) Fourier transforms of generalized functions, (ii) asymptotic expansions of Fourier integrals with singularities, (iii) direct evaluation using hypergeometric function algebra, and (iv) conversion to a simple gamma integral. The paper is largely pedagogical but some novel methods and results involving complete asymptotic series representations are presented. The formulae are useful in many ways, including the calculation of longrun variation matrices for multivariate time series with long memory and the econometric estimation of such models.
机译:长存储时间序列的一个常用定义属性是自协方差函数的幂律衰减。考虑了一些替代方法来获得此属性,这是根据替代定义来定义原点频谱中的分数极点。所考虑的方法包括使用(i)广义函数的Fourier变换,(ii)具有奇异性的Fourier积分的渐近展开,(iii)使用超几何函数代数的直接评估,以及(iv)转换为简单的伽玛积分。本文主要是教学法,但提出了一些新颖的方法和结果,涉及完整的渐近级数表示。这些公式在许多方面都非常有用,包括针对具有长记忆的多元时间序列计算长期变异矩阵以及此类模型的计量经济学估计。

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