This paper presents an approach for AI-based autocompletion of graph-based spatial
configurations using deep learning in the form of link prediction through graph neural
networks. The main goal of the research presented is to estimate the probability of
connections between the rooms of the spatial configuration graph at hand using the
available semantic information. In the context of early design stages, deep learning-based
prediction of spatial connections helps to make the design process more efficient and
sustainable using the past experiences collected in a training dataset. Using the
techniques of transfer learning, we adapted methods available in the modern graph-based
deep learning frameworks in order to apply them for our autocompletion purposes to
suggest possible further design steps. The results of training, testing, and evaluation
showed very good results and justified application of these methods.
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This paper presents an approach for AI-based autocompletion of graph-based spatial
configurations using deep learning in the form of link prediction through graph neural
networks. The main goal of the research presented is to estimate the probability of
connections between the rooms of the spatial configuration graph at hand using the
available semantic information. In the context of early design stages, deep learning-based
prediction of spatial connections helps to make the design process...
»