Multivariate spatial-statistical models are often used when modeling environmental and socio-demographic processes. The most commonly used models for multivariate spatial covariances assume both stationarity and symmetry for the cross-covariances, but these assumptions are rarely tenable in practice. In this article we introduce a new and highly flexible class of nonstationary and asymmetric multivariate spatial covariance models that are constructed by modeling the simpler and more familiar stationary and symmetric multivariate covariances on a warped domain. Inspired by recent developments in the univariate case, we propose modeling the warping function as a composition of a number of simple injective warping functions in a deep-learning framework. Importantly, covariance-model validity is guaranteed by construction. We establish the types of warpings that allow for cross-covariance symmetry and asymmetry, and we use likelihood-based methods for inference that are computationally efficient. The utility of this new class of models is shown through two data illustrations: a simulation study on nonstationary data and an application on ocean temperatures at two different depths.
翻译:环境和社会-人口过程模型往往使用多变空间-统计模型。多变空间共变模型最常用的多变空间共变模型假定交叉变量的静态性和对称性,但这些假设在实践中很少是可行的。在本条中,我们引入了一种新的高度灵活的非静止和不对称多变空间共变模型,这些模型是通过在扭曲的域上建模更简单、更熟悉的固定和对称性多变性模型而构建的。在未变性案例最近发展情况的启发下,我们提议将扭曲功能模型作为深学习框架内若干简单投影性拼拼凑功能的构成。 关键是,共变式模型的有效性得到构建的保障。我们建立了允许交叉共变相对性和不对称的扭曲类型,我们使用基于可能性的推论方法进行计算。这一新类型的模型的实用性通过两个数据图解显示:关于非静止数据的模拟研究,以及在两个不同深度的海洋温度上的应用。