Evaluating geo-environmental variables using a clustering based areal model

Global regression models do not accurately reflect the spatial heterogeneity which characterises most geo-environmental variables. In analysing the relationships between such variables, an approach is required which allows the model parameters to vary spatially. This paper proposes a new framework f...

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Veröffentlicht in:Computers & geosciences 2012-06, Vol.43, p.34-41
Hauptverfasser: Tutmez, Bulent, Kaymak, Uzay, Erhan Tercan, A., Lloyd, Christopher D.
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Sprache:eng
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Zusammenfassung:Global regression models do not accurately reflect the spatial heterogeneity which characterises most geo-environmental variables. In analysing the relationships between such variables, an approach is required which allows the model parameters to vary spatially. This paper proposes a new framework for exploring local relationships between geo-environmental variables. The method is based on extended objective function based fuzzy clustering with the environmental parameters estimated through on a locally weighted regression analysis. The case studies and prediction evaluations show that the fuzzy algorithm yields well-fitted models and accurate predictions. In addition to an increased accuracy of prediction relative to the widely-used geographically weighted regression (GWR), the proposed algorithm provides the search radius (bandwidth) and weights for local estimation directly from the data. The results suggest that the method could be employed effectively in tackling real world kernel-based modelling problems. ► Fuzzy clustering is a reliable method for appraising spatial environmental systems. ► Algorithm provides bandwidth and weights in local estimation directly from data. ► The method could be employed effectively in tackling kernel-based modelling problems.
ISSN:0098-3004
1873-7803
DOI:10.1016/j.cageo.2012.02.019