45
14

Estimating covariance functions of multivariate skew-Gaussian random fields on the sphere

Abstract

This paper considers a multivariate spatial random field, with each component having univariate marginal distributions of the skew-Gaussian type. We assume that the field is defined spatially on the unit sphere embedded in R3\mathbb{R}^3, allowing for modeling data available over large portions of planet Earth. This model admits explicit expressions for the marginal and cross covariances. However, the nn-dimensional distributions of the field are difficult to evaluate, because it requires the sum of 2n2^n terms involving the cumulative and probability density functions of a nn-dimensional Gaussian distribution. Since in this case inference based on the full likelihood is computationally unfeasible, we propose a composite likelihood approach based on pairs of spatial observations. This last being possible thanks to the fact that we have a closed form expression for the bivariate distribution. We illustrate the effectiveness of the method through simulation experiments and the analysis of a real data set of minimum and maximum temperatures.

View on arXiv
Comments on this paper