Activity Number:
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274
- Advances in Scalable Bayesian Methods for Spatial Data
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Type:
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Topic Contributed
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Date/Time:
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Tuesday, August 9, 2022 : 10:30 AM to 12:20 PM
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Sponsor:
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International Society for Bayesian Analysis (ISBA)
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Abstract #322107
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Title:
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Spatial Meshing and Manifold Preconditioning for Big Multivariate Models
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Author(s):
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Michele Peruzzi* and David Dunson
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Companies:
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Duke University and Duke University
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Keywords:
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spatial;
Gaussian process;
Bayesian;
MCMC;
gradient-based;
software
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Abstract:
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Quantifying spatial associations in multivariate geolocated data of different types is achievable via 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. We introduce methodologies for efficiently computing multivariate Bayesian models of spatially referenced non-Gaussian data. First, we outline spatial meshing as a tool for building scalable processes using patterned directed acyclic graphs. Then, we introduce a novel Langevin method based on manifold preconditioning which achieves superior sampling performance with non-Gaussian multivariate data that are common in studying species' communities. Applications showcase the flexibility of the proposed methodologies and the 'meshed' package for R.
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Authors who are presenting talks have a * after their name.