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    Geographically informed graph neural networks

    Access Status
    Fulltext not available
    Authors
    Ma, X.
    Zhang, Zehua
    Song, Yongze
    Date
    2025
    Type
    Journal Article
    
    Metadata
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    Citation
    Ma, X. and Zhang, Z. and Song, Y. 2025. Geographically informed graph neural networks. Spatial Statistics. 69.
    Source Title
    Spatial Statistics
    DOI
    10.1016/j.spasta.2025.100920
    ISSN
    2211-6753
    Faculty
    Faculty of Humanities
    School
    School of Design and the Built Environment
    URI
    http://hdl.handle.net/20.500.11937/98279
    Collection
    • Curtin Research Publications
    Abstract

    Graph neural networks (GNNs) have been introduced to spatial statistical tasks due to their mechanisms of simulating spatial interactions and processes among geographical neighbours using graph structures. However, previous methods ignore quantifying differences in attributes among adjacent spatial characteristics. Considering this spatial characteristic by fitting the spatial statistic trinity (SST) framework may help improve models’ accuracy and robustness. Thus, we introduce the geographically informed graph neural network (GIGNN) by considering the additional geospatial feature: closer geographical entities may interact less when spatial disparities are captured. When setting up the model, GIGNN leverages differences of attributes by spatial stratified heterogeneity, quantifies connections between geographical entities, and inherits k-order neighbour attribute aggregation and message-passing mechanisms from GNNs. GIGNN is applied to an urbanization analysis study in the Greater Perth Area, Australia, showing higher accuracy than the existing machine learning models and other GNNs in simulation and prediction accuracy. GIGNN achieved an accuracy of 84.1% for simulation and an accuracy of 81% for prediction. Incorporating spatial characteristics into GNNs enhances simulation and prediction accuracy in geoscientific applications, highlighting the importance of spatially aware models in solving complex problems by capturing geographical data dependencies.

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