‘A map says to you. Read me carefully, follow me closely, doubt me not …… I am the earth in the palm of your hands’ Beryl Markham
Abstract: Geospatial finance is an emerging field that integrates spatial data and analysis to provide insights into financial and environmental, social, and governance (ESG) aspects of various entities, including commercial assets, companies, portfolios, cities, and countries. The integration of spatial context is crucial for comprehensive financial assessments, enabling better risk identification, location optimization, and informed decision-making. Geospatial data, encompassing vector and raster data models, provides detailed information about geographic features and environmental conditions, essential for spatial analysis in finance. The Modifiable Areal Unit Problem (MAUP) and complex geometries add layers of complexity to spatial data interpretation, necessitating advanced analytical methods. Spatially explicit models, such as geographically weighted regression and geostatistics, address spatial dependencies and heterogeneity, providing precise insights for financial decision-making. Hotspot analysis and spatial autocorrelation measures are pivotal in detecting significant patterns and clustering within spatial datasets. Case studies, such as the assessment of China’s development finance, highlight practical applications and the impact of geospatial finance.
A comprehensive geospatial finance framework, incorporating a spatial hierarchical approach, aids in organizing and analyzing data at various scales. Use cases demonstrate the field’s wide-ranging applications, from optimizing investment locations and assessing climate risks to precision agriculture and blockchain-based carbon credit trading. Despite the transformative potential of geospatial finance, challenges such as data quality and integration persist, necessitating ongoing research and innovation. In summary, geospatial finance aligns economic and environmental goals through the integration of spatial data, offering robust tools for financial assessments and decision-making. The field’s development promises enhanced precision and insight into the spatial dynamics influencing financial and ESG outcomes.
Keywords: geospatial finance, GIS, satellite, autocorrelation, proximity, kriging, hotspot analysis, spatial econometrics, insurance, ecosystem services, environmental risk, resilience, spatial resolution
Bivariate map showing spatial distributions of low income households and particulate matter 2.5. This dark blues show the counties with high values for both.