Publication | Open Access
A representativeness-directed approach to mitigate spatial bias in VGI for the predictive mapping of geographic phenomena
33
Citations
42
References
2019
Year
Geographic PhenomenaEngineeringRepresentativeness-directed ApproachGeographic AnalyticsSocial SciencesGeographic Information SystemsGeospatial MappingData ScienceSpatial DistributionStatisticsSpatial ScienceCartographySpatial Statistical AnalysisGeographyUrban EcologySpatial Information SystemQuantitative Spatial ModelSpatial BiasVolunteered Geographic InformationRemote SensingSpatial Statistics
Volunteered geographic information (VGI) contains valuable field observations that represent the spatial distribution of geographic phenomena. As such, it has the potential to provide regularly updated low-cost field samples for predictively mapping the spatial variations of geographic phenomena. The predictive mapping of geographic phenomena often requires representative samples for high mapping accuracy, but samples consisting of VGI observations are often not representative as they concentrate on specific geographic areas (i.e. spatial bias) due to the opportunistic nature of voluntary observation efforts. In this article, we propose a representativeness-directed approach to mitigate spatial bias in VGI for predictive mapping. The proposed approach defines and quantifies sample representativeness by comparing the probability distributions of sample locations and the mapping area in the environmental covariate space. Spatial bias is mitigated by weighting the sample locations to maximize their representativeness. The approach is evaluated using species habit suitability mapping as a case study. The results show that the accuracy of predictive mapping using weighted sample locations is higher than using unweighted sample locations. A positive relationship between sample representativeness and mapping accuracy is also observed, suggesting that sample representativeness is a valid indicator of predictive mapping accuracy. This approach mitigates spatial bias in VGI to improve predictive mapping accuracy.
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