Local likelihood estimation for covariance functions with spatially-varying parameters: the convoSPAT package for R

M. Risser, Catherine A. Calder
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引用次数: 34

Abstract

In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial modeling, off-the-shelf software for model fitting does not as of yet exist. Convolution-based models are highly flexible yet notoriously difficult to fit, even with relatively small data sets. The general lack of pre-packaged options for model fitting makes it difficult to compare new methodology in nonstationary modeling with other existing methods, and as a result most new models are simply compared to stationary models. Using a convolution-based approach, we present a new nonstationary covariance function for spatial Gaussian process models that allows for efficient computing in two ways: first, by representing the spatially-varying parameters via a discrete mixture or "mixture component" model, and second, by estimating the mixture component parameters through a local likelihood approach. In order to make computation for a convolution-based nonstationary spatial model readily available, this paper also presents and describes the convoSPAT package for R. The nonstationary model is fit to both a synthetic data set and a real data application involving annual precipitation to demonstrate the capabilities of the package.
具有空间变化参数的协方差函数的局部似然估计:R的convoSPAT包
尽管基于卷积的非平稳空间建模方法引起了人们的兴趣和吸引力,但用于模型拟合的现成软件尚未存在。基于卷积的模型非常灵活,但即使是相对较小的数据集,也很难拟合。由于模型拟合通常缺乏预先打包的选项,因此很难将非平稳建模中的新方法与其他现有方法进行比较,因此大多数新模型只是与平稳模型进行比较。使用基于卷积的方法,我们为空间高斯过程模型提出了一个新的非平稳协方差函数,该函数允许以两种方式进行高效计算:首先,通过离散混合或“混合成分”模型表示空间变化的参数,其次,通过局部似然方法估计混合成分参数。为了方便地计算基于卷积的非平稳空间模型,本文还提出并描述了r的convoSPAT包。非平稳模型适合于合成数据集和涉及年降水的实际数据应用,以证明该包的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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