Spatial Extremes at Scale: A Case Study of Surface Skin Temperature and Heat Risk in the United States
Ben Seiyon Lee, Reetam Majumder, Jordan Richards, Emma S. Simpson, and Likun Zhang

TL;DR
This paper introduces a scalable Bayesian modeling approach for spatial temperature extremes, applied to heat risk assessment in the US Four Corners region, addressing computational challenges in high-dimensional spatial data.
Contribution
It proposes a novel random scale mixture process and scalable inference strategies for efficient Bayesian spatial extreme value modeling.
Findings
Effective modeling of complex spatial dependencies in temperature extremes.
Scalable inference methods validated through large-scale simulations.
Application to high-resolution temperature data reveals spatial heterogeneity in heat risk.
Abstract
Understanding and mapping extreme heat is critical for risk management and public health planning, particularly in regions with complex terrain and heterogeneous climate. We present a case study of extreme heat in the Four Corners region of the United States, using high-resolution surface skin temperature data from the North American Land Data Assimilation System to characterize spatially heterogeneous and seasonally varying extremes across complex terrain, and to assess their implications for heat-related public health risks. Spatial extremes exhibit complex dependencies across geographic regions, which require sophisticated statistical models to capture. While recent advances in spatial extreme value modeling provide flexible representations of joint tail dependencies, statistical inference remains computationally demanding, especially for datasets with a large number of locations. To…
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