A linearization for stable and fast geographically weighted Poisson regression
Although geographically weighted Poisson regression (GWPR) is a popular regression for spatially indexed count data, its development is relatively limited compared to that found for linear geographically weighted regression (GWR), where many extensions (e.g. multiscale GWR, scalable GWR) have been proposed. The weak development of GWPR can be attributed to the computational cost and identification problem in the underpinning Poisson regression model. This study proposes linearized GWPR (L-GWPR) by introducing a log-linear approximation into the GWPR model to overcome these bottlenecks. Because the L-GWPR model is identical to the Gaussian GWR model, it is free from the identification problem, easily implemented, computationally efficient, and offers similar potential for extension. Specifically, L-GWPR does not require a double-loop algorithm, which makes GWPR slow for large samples. Furthermore, we extended L-GWPR by introducing ridge regularization to enhance its stability (regularized L-GWPR). The results of the Monte Carlo experiments confirmed that regularized L-GWPR estimates local coefficients accurately and computationally efficiently. Finally, we compared GWPR and regularized L-GWPR through a crime analysis in Tokyo.
| Item Type | Article |
|---|---|
| Open Access | Green |
| Additional information | Funded by the Japan Society for the Promotion of Science under Grant 20K13261, 21H01447, and 21H01558, and the Joint Support Center for Data Science Research under Grant 006RP2022. |
| Keywords | Identification problem, Ridge regression, Local coefficients, Log-linear approximation, Linearized geographically weighted Poisson regression |
| Project | S2N - Soil to Nutrition [ISPG] |
| Date Deposited | 05 Dec 2025 10:37 |
| Last Modified | 19 Dec 2025 14:56 |


