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Spatial meshing for general Bayesian multivariate models.

Publication ,  Journal Article
Peruzzi, M; Dunson, DB
Published in: Journal of machine learning research : JMLR
March 2024

Quantifying spatial and/or temporal associations in multivariate geolocated data of different types is achievable via spatial random effects in a Bayesian hierarchical model, but severe computational bottlenecks arise when spatial dependence is encoded as a latent Gaussian process (GP) in the increasingly common large scale data settings on which we focus. The scenario worsens in non-Gaussian models because the reduced analytical tractability leads to additional hurdles to computational efficiency. In this article, we introduce Bayesian models of spatially referenced data in which the likelihood or the latent process (or both) are not Gaussian. First, we exploit the advantages of spatial processes built via directed acyclic graphs, in which case the spatial nodes enter the Bayesian hierarchy and lead to posterior sampling via routine Markov chain Monte Carlo (MCMC) methods. Second, motivated by the possible inefficiencies of popular gradient-based sampling approaches in the multivariate contexts on which we focus, we introduce the simplified manifold preconditioner adaptation (SiMPA) algorithm which uses second order information about the target but avoids expensive matrix operations. We demostrate the performance and efficiency improvements of our methods relative to alternatives in extensive synthetic and real world remote sensing and community ecology applications with large scale data at up to hundreds of thousands of spatial locations and up to tens of outcomes. Software for the proposed methods is part of R package meshed, available on CRAN.

Duke Scholars

Published In

Journal of machine learning research : JMLR

DOI

EISSN

1533-7928

ISSN

1532-4435

Publication Date

March 2024

Volume

25

Start / End Page

87

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences
 

Citation

APA
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MLA
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Peruzzi, M., & Dunson, D. B. (2024). Spatial meshing for general Bayesian multivariate models. Journal of Machine Learning Research : JMLR, 25, 87. https://doi.org/10.48550/arxiv.2201.10080
Peruzzi, Michele, and David B. Dunson. “Spatial meshing for general Bayesian multivariate models.Journal of Machine Learning Research : JMLR 25 (March 2024): 87. https://doi.org/10.48550/arxiv.2201.10080.
Peruzzi M, Dunson DB. Spatial meshing for general Bayesian multivariate models. Journal of machine learning research : JMLR. 2024 Mar;25:87.
Peruzzi, Michele, and David B. Dunson. “Spatial meshing for general Bayesian multivariate models.Journal of Machine Learning Research : JMLR, vol. 25, Mar. 2024, p. 87. Epmc, doi:10.48550/arxiv.2201.10080.
Peruzzi M, Dunson DB. Spatial meshing for general Bayesian multivariate models. Journal of machine learning research : JMLR. 2024 Mar;25:87.

Published In

Journal of machine learning research : JMLR

DOI

EISSN

1533-7928

ISSN

1532-4435

Publication Date

March 2024

Volume

25

Start / End Page

87

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences