Interpreting core forms of urban morphology linked to urban functions with explainable graph neural network
Dongsheng Chen, Yu Feng, Xun Li, Mingya Qu, Peng Luo, Liqiu Meng

TL;DR
This paper introduces CoMo, an explainable deep learning framework using graph neural networks to interpret complex urban forms and their relationship with urban functions, validated with high accuracy in Boston.
Contribution
The study develops a novel explainable urban morphology representation, CoMo, linking urban form to function with interpretability and strong predictive performance.
Findings
Urban morphology influences land use efficiency (R2=0.721, p<0.001).
Core urban forms follow a center-urban-suburban pattern.
CoMo effectively reveals links between urban form and function.
Abstract
Understanding the high-order relationship between urban form and function is essential for modeling the underlying mechanisms of sustainable urban systems. Nevertheless, it is challenging to establish an accurate data representation for complex urban forms that are readily explicable in human terms. This study proposed the concept of core urban morphology representation and developed an explainable deep learning framework for explicably symbolizing complex urban forms into the novel representation, which we call CoMo. By interpretating the well-trained deep learning model with a stable weighted F1-score of 89.14%, CoMo presents a promising approach for revealing links between urban function and urban form in terms of core urban morphology representation. Using Boston as a study area, we analyzed the core urban forms at the individual-building, block, and neighborhood level that are…
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