DescriptionGWNN and GWR prediction differences.jpg
English: Hagenauer et al. (2022)'s figure 12. A geographically weighted artificial neural network. International journal of geographical information science, volume 36, issue 2. Authors computed the distance metrics for geographically weighting the GWR and GWNN models, through the variables Euclidean distance (ED) and travel time distance (TTD).
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Captions
Difference in predicted house prices from a Geographically Weighted Regression (GWR) model and a Geographically Weighted (Artificial) Neural Network (GWNN) model, in the federal states of Austria.
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