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Living upon networks: A heterogeneous graph neural embedding integrating waterway and street systems for urban form understanding

journal contribution
posted on 2025-07-11, 11:15 authored by Pengyuan Liu, Yuan Wang, Stef De SabbataStef De Sabbata, Binyu Lei, Filip Biljecki, Jing Tang, Rudi Stouffs
Cities are supported by multiple, interacting networks, most prominently streets, which channel movement and economic exchange, and, in many contexts, waterways, which regulate flows of goods, people, and environmental amenities. Conventional quantitative studies of urban form have tended to privilege streets alone, limiting their ability to capture the full spatial logic of the urban fabric. This paper introduces a Heterogeneous Graph Autoen-coder (HeterGAE) that jointly embeds street and waterway systems, providing a unified, graph-based representation of urban form. Using Singapore as a case study, we train HeterGAE embeddings and employ them in two downstream tasks: predicting daytime and night-time land-surface temperature (LST) and estimating resale prices of public housing. Relative to a baseline model that encodes streets only, the dual-network embeddings improve predictive accuracy by about 20% for both tasks, confirming that natural and built infrastructures make complementary contributions to urban socio-environmental processes. By capturing the interaction between street junctions and waterway nodes within a single latent space, the proposed approach provides a flexible template for GeoAI-assisted urban analytics in diverse settings. The results underscore the value of integrating heterogeneous urban networks in evidence-based planning and highlight the potential of graph-neural techniques for developing more nuanced and sustainable urban strategies.<p></p>

History

Author affiliation

College of Science & Engineering Geography, Geology & Environment

Version

  • AM (Accepted Manuscript)

Published in

Environment and Planning B: Urban Analytics and City Science

Publisher

SAGE Publications

issn

2399-8083

eissn

2399-8091

Copyright date

2025

Available date

2025-07-11

Language

en

Deposited by

Dr Stef De Sabbata

Deposit date

2025-07-11

Data Access Statement

The datasets generated and/or analyzed during the current study are available from the corresponding author on reasonable request.

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