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This module provides functionality to calibrate multiscale (M)GWR as well as traditional GWR. It is
built upon the sparse generalized linear modeling (spglm) module.
Features
GWR model calibration via iteratively weighted least squares for Gaussian,
Poisson, and binomial probability models.
GWR bandwidth selection via golden section search or equal interval search
GWR-specific model diagnostics, including a multiple hypothesis test
correction and local collinearity
Monte Carlo test for spatial variability of parameter estimate surfaces
GWR-based spatial prediction
MGWR model calibration via GAM iterative backfitting for Gaussian model
Parallel computing for GWR and MGWR
MGWR covariate-specific inference, including a multiple hypothesis test
correction and local collinearity
Bandwidth confidence intervals for GWR and MGWR
Citation
Oshan, T. M., Li, Z., Kang, W., Wolf, L. J., & Fotheringham, A. S. (2019). mgwr: A Python implementation of multiscale geographically weighted regression for investigating process spatial heterogeneity and scale. ISPRS International Journal of Geo-Information, 8(6), 269.