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Local Linear Estimation for Spatial Random Processes with Stochastic Trend and Stationary Noise

机译:具有随机趋势和固定噪声的空间随机过程的局部线性估计

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We consider the problem of estimating the trend for a spatial random process model expressed as Z(x) = μ(x) + ε(x) + δ(x), where the trend μ is a smooth random function, ε(x) is a mean zero, stationary random process, and {δ(x)} are assumed to be i.i.d. noise with zero mean. We propose a new model for stochastic trend in ℝddocumentclass[12pt]{minimal} usepackage{amsmath} usepackage{wasysym} usepackage{amsfonts} usepackage{amssymb} usepackage{amsbsy} usepackage{mathrsfs} usepackage{upgreek} setlength{oddsidemargin}{-69pt} egin{document}$mathbb {R}^{d}$end{document} by generalizing the notion of a structural model for trend in time series. We estimate the stochastic trend nonparametrically using a local linear regression method and derive the asymptotic mean squared error of the trend estimate under the proposed model for trend. Our results show that the asymptotic mean squared error for the stochastic trend is of the same order of magnitude as that of a deterministic trend of comparable complexity. This result suggests from the point of view of estimation under stationary noise, it is immaterial whether the trend is treated as deterministic or stochastic. Moreover, we show that the rate of convergence of the estimator is determined by the degree of decay of the correlation function of the stationary process ε(x) and this rate can be different from the usual rate of convergence found in the literature on nonparametric function estimation. We also propose a data-dependent selection procedure for the bandwidth parameter which is based on a generalization of Mallow’s Cp criterion. We illustrate the methodology by simulation studies and by analyzing a data on surface temperature anomalies.
机译:我们考虑估计作为z(x)=μ(x)=μ(x)+Δ(x)表示为z(x)=μ(x)的空间随机过程模型趋势的问题,其中趋势μ是平滑的随机函数,ε(x)是一个平均零,静止的随机过程,并且假设{Δ(x)}是iid噪音零意味着。我们提出了一个新模型在ℝd documentClass [12pt]中的随机趋势模型[12pt] {minimal} usepackage {ammath} usepackage {isysym} usepackage {amssymb} usepackage {amsbsy} usepackage {mathrsfs} usepackage {升级} setLength { oddsidemargin} { - 69pt} begin {document} $ mathbb {r} ^ {d} $ 结束{document}通过概括时间序列趋势的结构模型的概念概括。我们使用局部线性回归方法估计随机趋势,并使用局部线性回归方法衍生趋势趋势模型下趋势估计的渐近均方误差。我们的研究结果表明,随机趋势的渐近均方误差与相当复杂性的确定性趋势相同。该结果表明,从静止噪声下的估计的角度来看,趋势是否被视为确定性或随机的估计是无关紧要的。此外,我们表明,估计器的收敛速度由静止过程ε(x)的相关函数的衰减程度决定,并且该速率可能与非参数函数的文献中的常用速率不同估计。我们还提出了一种基于Mallow的CP标准的泛化的带宽参数的数据相关的选择过程。我们通过模拟研究和通过分析表面温度异常的数据来说明方法。

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