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Spatial Heterogeneity in Climate Risk and Human Flourishing: An Exploration with Generative AI

Stefano Maria Iacus, Haodong Qi, Devika Jain

TL;DR

A spatial framework to examine how cumulative climate risk relates to multidimensional human flourishing across U.S. counties is developed and demonstrates how Generative AI can be combined with latent construct modeling for geographical analysis and for spatial knowledge extraction.

Abstract

Recent advances in Generative Artificial Intelligence (AI), particularly Large Language Models (LLMs), enable scalable extraction of spatial information from unstructured text and offer new methodological opportunities for studying climate geography. This study develops a spatial framework to examine how cumulative climate risk relates to multidimensional human flourishing across U.S. counties. High-resolution climate hazard indicators are integrated with a Human Flourishing Geographic Index (HFGI), an index derived from classification of 2.6 billion geotagged tweets using fine-tuned open-source Large Language Models (LLMs). These indicators are aggregated to the US county-level and mapped to a structural equation model to infer overall climate risk and human flourishing dimensions, including expressed well-being, meaning and purpose, social connectedness, psychological distress, physical condition, economic stability, religiosity, character and virtue, and institutional trust. The results reveal spatially heterogeneous associations between greater cumulative climate risk and lower levels of expressed human flourishing, with coherent spatial patterns corresponding to recurrent exposure to heat, flooding, wind, drought, and wildfire hazards. The study demonstrates how Generative AI can be combined with latent construct modeling for geographical analysis and for spatial knowledge extraction.

Spatial Heterogeneity in Climate Risk and Human Flourishing: An Exploration with Generative AI

TL;DR

A spatial framework to examine how cumulative climate risk relates to multidimensional human flourishing across U.S. counties is developed and demonstrates how Generative AI can be combined with latent construct modeling for geographical analysis and for spatial knowledge extraction.

Abstract

Recent advances in Generative Artificial Intelligence (AI), particularly Large Language Models (LLMs), enable scalable extraction of spatial information from unstructured text and offer new methodological opportunities for studying climate geography. This study develops a spatial framework to examine how cumulative climate risk relates to multidimensional human flourishing across U.S. counties. High-resolution climate hazard indicators are integrated with a Human Flourishing Geographic Index (HFGI), an index derived from classification of 2.6 billion geotagged tweets using fine-tuned open-source Large Language Models (LLMs). These indicators are aggregated to the US county-level and mapped to a structural equation model to infer overall climate risk and human flourishing dimensions, including expressed well-being, meaning and purpose, social connectedness, psychological distress, physical condition, economic stability, religiosity, character and virtue, and institutional trust. The results reveal spatially heterogeneous associations between greater cumulative climate risk and lower levels of expressed human flourishing, with coherent spatial patterns corresponding to recurrent exposure to heat, flooding, wind, drought, and wildfire hazards. The study demonstrates how Generative AI can be combined with latent construct modeling for geographical analysis and for spatial knowledge extraction.
Paper Structure (10 sections, 7 equations, 4 figures, 3 tables)

This paper contains 10 sections, 7 equations, 4 figures, 3 tables.

Figures (4)

  • Figure 1: Measured Climate Risks
  • Figure 2: Correlations between the Human Flourishing indicators (HFGI) and the Climate Risk and Resilience (CRI) indexes.
  • Figure 3: Estimates of Structural Equation Model. Note: *$p<.05$, **$p<.01$, ***$p<.001$.
  • Figure 4: Spatial Variation of Latent Climate Risk and Human Flourishing Dimensions across US Counties, January 2013 - June 2023. Note: Panels are ordered in descending absolute standardized path from climate risk (cf. Figure \ref{['fig:sem_path']}).