Exploring architectural floor plan appropriateness in context of Bangladesh leveraging graph neural networks in spatial context
Abstract
This paper investigates the use of Graph Neural Networks (GNNs) for classifying architectural
floor plans and establishing the applicability of international floor plans
with respect to Bangladeshi architectural standards. Flooring plan data is mainly
derived from Chinese residential designs, which are converted into graph-based representations
where rooms represent the nodes, and the connections through doors
form the edges. Node features are prepared that include room area, centroid coordinates
of the room, and room type, while door connections form unweighted
edges. Three GNN models—GCN, GraphSAGE, and GAT are tested to evaluate
their effectiveness in this binary classification task. GraphSAGE yielded the best
performance among all the three GNN models tested, showing 87.09% test accuracy
and an AUC-ROC score of 0.9512, with good generalization on unseen data. This
work illustrates how GNNs can capture spatial relations from architectural data to
enable scalable solutions for cross-cultural design evaluation and urban planning.
It contributes to the increasingly important intersection of AI and Architecture by
going beyond image-based traditional approaches and introducing a framework that
automatically assesses the appropriateness of architectural designs concerning different
cultural contexts.