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An approximate fractional Gaussian noise model with O(n) computational cost

机译:具有O(n)计算成本的近似分数高斯噪声模型

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摘要

Fractional Gaussian noise (fGn) is a stationary time series model with long-memory properties applied in various fields like econometrics, hydrology and climatology. The computational cost in fitting an fGn model of length n using a likelihood-based approach is O(n2), exploiting the Toeplitz structure of the covariance matrix. In most realistic cases, we do not observe the fGn process directly but only through indirect Gaussian observations, so the Toeplitz structure is easily lost and the computational cost increases to O(n3). This paper presents an approximate fGn model of O(n) computational cost, both with direct and indirect Gaussian observations, with or without conditioning. This is achieved by approximating fGn with a weighted sum of independent first-order autoregressive (AR) processes, fitting the parameters of the approximation to match the autocorrelation function of the fGn model. The resulting approximation is stationary despite being Markov and gives a remarkably accurate fit using only four AR components. Specifically, the given approximate fGn model is incorporated within the class of latent Gaussian models in which Bayesian inference is obtained using the methodology of integrated nested Laplace approximation. The performance of the approximate fGn model is demonstrated in simulations and two real data examples.
机译:分数高斯噪声(fGn)是固定时间序列模型,具有长存储特性,应用于计量经济学,水文学和气候学等各个领域。利用协方差矩阵的Toeplitz结构,使用基于似然的方法拟合长度为n的fGn模型的计算成本为O(n2)。在大多数实际情况下,我们不会直接观察fGn过程,而只是通过间接的高斯观察,因此Toeplitz结构很容易丢失,并且计算成本增加到O(n3)。本文介绍了具有直接和间接高斯观测值(带或不带条件)的O(n)计算成本的近似fGn模型。这是通过用独立的一阶自回归(AR)过程的加权和近似fGn来实现的,并拟合近似参数以匹配fGn模型的自相关函数。尽管是马尔可夫模型,但所得的近似值是固定的,并且仅使用四个AR分量即可得出非常精确的拟合。具体来说,将给定的近似fGn模型并入潜在高斯模型类别,在该模型中,贝叶斯推断是使用集成嵌套拉普拉斯近似方法获得的。模拟和两个真实数据示例演示了近似fGn模型的性能。

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