Skip to Main Content
607
Views
7
CrossRef citations to date
Altmetric
Pages 14-25
Received 01 May 2015
Accepted author version posted online: 25 Feb 2016
Published online:16 Feb 2017
 
Translator disclaimer

ABSTRACT

In many atmospheric and earth sciences, it is of interest to identify dominant spatial patterns of variation based on data observed at p locations and n time points with the possibility that p > n. While principal component analysis (PCA) is commonly applied to find the dominant patterns, the eigenimages produced from PCA may exhibit patterns that are too noisy to be physically meaningful when p is large relative to n. To obtain more precise estimates of eigenimages, we propose a regularization approach incorporating smoothness and sparseness of eigenimages, while accounting for their orthogonality. Our method allows data taken at irregularly spaced or sparse locations. In addition, the resulting optimization problem can be solved using the alternating direction method of multipliers, which is easy to implement, and applicable to a large spatial dataset. Furthermore, the estimated eigenfunctions provide a natural basis for representing the underlying spatial process in a spatial random-effects model, from which spatial covariance function estimation and spatial prediction can be efficiently performed using a regularized fixed-rank kriging method. Finally, the effectiveness of the proposed method is demonstrated by several numerical examples.

Supplementary Materials

The supplementary file contains proof of Proposition 1.

Acknowledgments

The authors are grateful to the associate editor and the two referees for their insightful and constructive comments, which greatly improved the presentation of this article. This research was supported in part by ROC Ministry of Science and Technology grant MOST 103-2118-M-001-007-MY3.

Login options

Purchase * Save for later
Online

Article Purchase 24 hours to view or download: USD 51.00 Add to cart

Issue Purchase 30 days to view or download: USD 141.00 Add to cart

* Local tax will be added as applicable