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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Gaussian maximum likelihood estimation for ARMA models II: Spatial processes
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Gaussian maximum likelihood estimation for ARMA models II: Spatial processes

机译:ARMA模型的高斯最大似然估计II:空间过程

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摘要

This paper examines the Gaussian maximum likelihood estimator (GMLE) in the context of a general form of spatial autoregressive and moving average (ARMA) processes with finite second moment. The ARMA processes are supposed to be causal and invertible under the half-plane unilateral order, but not necessarily Gaussian. We show that the GMLE is consistent. Subject to a modification to confine the edge effect, it is also asymptotically distribution-free in the sense that the limit distribution is normal, unbiased and has variance depending only on the autocorrelation function. This is an analogue of Hannan's classic result for time series in the context of spatial processes.
机译:本文在具有有限第二矩的空间自回归和移动平均(ARMA)过程的一般形式的背景下,研究了高斯最大似然估计器(GMLE)。在半平面单边顺序下,ARMA过程被认为是因果可逆的,但不一定是高斯的。我们表明GMLE是一致的。进行修改以限制边缘效应,就极限分布为正态,无偏且仅依赖于自相关函数的方差而言,它也是渐近分布的。这类似于汉南在空间过程中对时间序列的经典结果。

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