BibTeX
@article{2107.07736v3,
Author = {Xiaotian Zheng and Athanasios Kottas and Bruno Sansó},
Title = {Nearest-Neighbor Mixture Models for Non-Gaussian Spatial Processes},
Eprint = {2107.07736v3},
ArchivePrefix = {arXiv},
PrimaryClass = {stat.ME},
Abstract = {We develop a class of nearest-neighbor mixture models that provide direct,
computationally efficient, probabilistic modeling for non-Gaussian geospatial
data. The class is defined over a directed acyclic graph, which implies
conditional independence in representing a multivariate distribution through
factorization into a product of univariate conditionals, and is extended to a
full spatial process. We model each conditional as a mixture of spatially
varying transition kernels, with locally adaptive weights, for each one of a
given number of nearest neighbors. The modeling framework emphasizes the
description of non-Gaussian dependence at the data level, in contrast with
approaches that introduce a spatial process for transformed data, or for
functionals of the data probability distribution. Thus, it facilitates
efficient, full simulation-based inference. We study model construction and
properties analytically through specification of bivariate distributions that
define the local transition kernels, providing a general strategy for modeling
general types of non-Gaussian data. Regarding computation, the framework lays
out a new approach to handling spatial data sets, leveraging a mixture model
structure to avoid computational issues that arise from large matrix
operations. We illustrate the methodology using synthetic data examples and an
analysis of Mediterranean Sea surface temperature observations.},
Year = {2021},
Month = {Jul},
Url = {http://arxiv.org/abs/2107.07736v3},
File = {2107.07736v3.pdf}
}