Tutmez, BulentKaymak, UzayTercan, A. Erhan2024-08-042024-08-0420121436-32401436-3259https://doi.org/10.1007/s00477-011-0532-2https://hdl.handle.net/11616/95803Spatial data analysis focuses on both attribute and locational information. Local analyses deal with differences across space whereas global analyses deal with similarities across space. This paper addresses an experimental comparative study to analyse the spatial data by some weighted local regression models. Five local regression models have been developed and their estimation capacities have been evaluated. The experimental studies showed that integration of objective function based fuzzy clustering to geostatistics provides some accurate and general models structures. In particular, the estimation performance of the model established by combining the extended fuzzy clustering algorithm and standard regional dependence function is higher than that of the other regression models. Finally, it could be suggested that the hybrid regression models developed by combining soft computing and geostatistics could be used in spatial data analysis.eninfo:eu-repo/semantics/openAccessLocal regression modellingGWRFuzzy clusteringRegional dependence functionLocal spatial regression models: a comparative analysis on soil contaminationArticle2671013102310.1007/s00477-011-0532-22-s2.0-84866459953Q1WOS:000308812500010Q1