OSM land use data quality and its association with city-level socioeconomic conditions in China
Huiyan Shang,
Yang Ju,
Xiuyuan Zhang,
Jiangang Xu,
Xuecao Li and
Xavier Delclòs-Alió
Environment and Planning B, 2026, vol. 53, issue 1, 228-243
Abstract:
OpenStreetMap (OSM) can serve as an alternative to map the built environment in data-sparse areas such as China. However, the quality of OSM land use data and its relationship with city-level socioeconomic conditions (e.g., income level) remain understudied. Using a sample of 332 Chinese cities and the time-series China Urban Land Use Mapping dataset as the reference, we investigated inter- and intra-city variations in the completeness and accuracy of OSM land use data as of the year 2022, and their associations with city-level socioeconomic conditions. Across the 332 cities, we found that the median completeness and overall accuracy of citywide OSM land use data was 21.90% and 79.57%, respectively. After adjusting for population density and province-fixed effects, a one-standard deviation (1-SD) increase in GDP per capita, education level, vehicle ownership, and urbanization rate were associated with 2.54%, 2.48%, 1.92%, and 2.48% higher completeness of OSM land use data in a given city. However, a 1-SD increase in vehicle ownership was associated with 0.97% lower overall accuracy. The accuracy of some land uses in OSM was positively associated with city-level socioeconomic conditions. These findings highlight the complexity of land use mapping and potential limitations of using OSM land use data in Chinese cities.
Keywords: volunteered geographic information; data quality; bias; built environment; mapping (search for similar items in EconPapers)
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:sae:envirb:v:53:y:2026:i:1:p:228-243
DOI: 10.1177/23998083251341667
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