Capturing Unseen Spatial Heat Extremes Through Dependence-Aware Generative Modeling

arXiv stat.ML / 4/10/2026

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Key Points

  • Climate records can miss “unseen” heat extreme events beyond historical experience, and conventional approaches that ignore spatial dependence can underestimate multi-location hazards.
  • The paper introduces DeepX-GAN, a dependence-aware generative adversarial model that learns spatial structure of rare extremes and can generate statistically plausible events beyond the observed record via zero-shot generalization.
  • It defines two categories of unseen events—direct-hit extremes affecting a target location and near-miss extremes—and shows these events can uncover hidden risk versus creating false reassurance.
  • Validation against large climate-model ensembles supports the model’s ability to simulate unseen spatial extremes.
  • An application to the Middle East and North Africa finds that countries with high vulnerability and low readiness face disproportionate threats, with future warming expected to expand/shift hotspots across multiple regions, implying a need for spatially adaptive risk planning.

Abstract

Observed records of climate extremes provide an incomplete view of risk, missing "unseen" events beyond historical experience. Ignoring spatial dependence further underestimates hazards striking multiple locations simultaneously. We introduce DeepX-GAN (Dependence-Enhanced Embedding for Physical eXtremes - Generative Adversarial Network), a deep generative model that explicitly captures the spatial structure of rare extremes. Its zero-shot generalizability enables simulation of statistically plausible extremes beyond the observed record, validated against long climate model large-ensemble simulations. We define two unseen types: direct-hit extremes that affect the target and near-miss extremes that narrowly miss. These unrealized events reveal hidden risks and can either prompt proactive adaptation or reinforce a sense of false resilience. Applying DeepX-GAN to the Middle East and North Africa shows that unseen heat extremes disproportionately threaten countries with high vulnerability and low socioeconomic readiness. Future warming is projected to expand and shift these extremes, creating persistent hotspots in Northwest Africa and the Arabian Peninsula, and new hotspots in Central Africa, necessitating spatially adaptive risk planning.