We describe our implementation of the multivariate Mat\'ern model for multivariate spatial datasets, using Vecchia's approximation and a Fisher scoring optimization algorithm. We consider various pararameterizations for the multivariate Mat\'ern that have been proposed in the literature for ensuring model validity, as well as an unconstrained model. A strength of our study is that the code is tested on many real-world multivariate spatial datasets. We use it to study the effect of ordering and conditioning in Vecchia's approximation and the restrictions imposed by the various parameterizations. We also consider a model in which co-located nuggets are correlated across components and find that forcing this cross-component nugget correlation to be zero can have a serious impact on the other model parameters, so we suggest allowing cross-component correlation in co-located nugget terms.
翻译:我们用Vecchia的近似值和Fisher评分优化算法描述多变量 Mat\'ern 空间数据集多变量模型的实施情况。我们考虑了文献中为确保模型有效性而提出的多种变量 Mat\'ern 的参数化模型,以及一个不受限制的模型。我们研究的一个强点是,该代码在许多真实世界多变量空间数据集中进行了测试。我们用它来研究Vecchia近近似值的订购和调节效果以及各种参数化的限制。我们还考虑了一个模型,其中将各个组件的共位核相连接,并发现强迫这种跨构件的关联性为零会对其他模型参数产生严重影响,因此我们建议允许在共定位的纳吉特术语中进行交叉成份关联。