Navigation auf zora.uzh.ch

Search ZORA

ZORA (Zurich Open Repository and Archive)

Combining heterogeneous spatial datasets with process-based spatial fusion models: A unifying framework

Wang, Craig; Furrer, Reinhard (2021). Combining heterogeneous spatial datasets with process-based spatial fusion models: A unifying framework. Computational Statistics & Data Analysis, 161:107240.

Abstract

In modern spatial statistics, the structure of data has become more heterogeneous. Depending on the types of spatial data, different modeling strategies are used. For example, kriging approaches for geostatistical data; Gaussian Markov random field models for lattice data; or log Gaussian Cox process models for point-pattern data. Despite these different modeling choices, the nature of underlying data-generating (latent) processes is often the same, which can be represented by some continuous spatial surfaces. A unifying framework is introduced for process-based multivariate spatial fusion models. The framework can jointly analyze all three aforementioned types of spatial data or any combinations thereof. Moreover, the framework accommodates different likelihoods for geostatistical and lattice data. It is shown that some established approaches, such as linear models of coregionalization, can be viewed as special cases of the proposed framework. A flexible and scalable implementation using R-INLA is provided. Simulation studies confirm that the prediction of latent processes improves as one moves from univariate spatial models to multivariate spatial fusion models. The framework is illustrated via a case study using datasets from a cross-sectional study linked with a national cohort in Switzerland. The differences in underlying spatial risks between respiratory disease and lung cancer are examined in the case study.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:07 Faculty of Science > Institute of Mathematics
07 Faculty of Science > Institute for Computational Science
Dewey Decimal Classification:340 Law
610 Medicine & health
510 Mathematics
Scopus Subject Areas:Physical Sciences > Statistics and Probability
Physical Sciences > Computational Mathematics
Physical Sciences > Computational Theory and Mathematics
Physical Sciences > Applied Mathematics
Uncontrolled Keywords:Statistics and Probability, Computational Theory and Mathematics, Applied Mathematics, Computational Mathematics
Language:English
Date:1 September 2021
Deposited On:06 Aug 2021 09:19
Last Modified:25 Dec 2024 02:39
Publisher:Elsevier
ISSN:0167-9473
OA Status:Hybrid
Publisher DOI:https://doi.org/10.1016/j.csda.2021.107240
Download PDF  'Combining heterogeneous spatial datasets with process-based spatial fusion models: A unifying framework'.
Preview
  • Content: Published Version
  • Language: English
  • Licence: Creative Commons: Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)

Metadata Export

Statistics

Citations

Dimensions.ai Metrics
2 citations in Web of Science®
3 citations in Scopus®
Google Scholar™

Altmetrics

Downloads

106 downloads since deposited on 06 Aug 2021
25 downloads since 12 months
Detailed statistics

Authors, Affiliations, Collaborations

Similar Publications