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Bayesian modeling of air pollution extremes using nested multivariate max-stable processes.

Sabrina VettoriRaphaël HuserMarc G Genton
Published in: Biometrics (2019)
Capturing the potentially strong dependence among the peak concentrations of multiple air pollutants across a spatial region is crucial for assessing the related public health risks. In order to investigate the multivariate spatial dependence properties of air pollution extremes, we introduce a new class of multivariate max-stable processes. Our proposed model admits a hierarchical tree-based formulation, in which the data are conditionally independent given some latent nested positive stable random factors. The hierarchical structure facilitates Bayesian inference and offers a convenient and interpretable characterization. We fit this nested multivariate max-stable model to the maxima of air pollution concentrations and temperatures recorded at a number of sites in the Los Angeles area, showing that the proposed model succeeds in capturing their complex tail dependence structure.
Keyphrases
  • air pollution
  • data analysis
  • particulate matter
  • lung function
  • healthcare
  • emergency department
  • drug delivery
  • mental health
  • big data
  • chronic obstructive pulmonary disease
  • cystic fibrosis
  • deep learning