作者
Brian J Reich, Jo Eidsvik, Michele Guindani, Amy J Nail, Alexandra M Schmidt
发表日期
2011/12/12
期刊
The Annals of Applied Statistics
卷号
5
期号
4
页码范围
2265
出版商
NIH Public Access
简介
In geostatistics, it is common to model spatially distributed phenomena through an underlying stationary and isotropic spatial process. However, these assumptions are often untenable in practice because of the influence of local effects in the correlation structure. Therefore, it has been of prolonged interest in the literature to provide flexible and effective ways to model non-stationarity in the spatial effects. Arguably, due to the local nature of the problem, we might envision that the correlation structure would be highly dependent on local characteristics of the domain of study, namely the latitude, longitude and altitude of the observation sites, as well as other locally defined covariate information. In this work, we provide a flexible and computationally feasible way for allowing the correlation structure of the underlying processes to depend on local covariate information. We discuss the properties of the induced covariance …
引用总数
201220132014201520162017201820192020202120222023202412668649118811
学术搜索中的文章
BJ Reich, J Eidsvik, M Guindani, AJ Nail, AM Schmidt - The annals of applied statistics, 2011