2023
DOI: 10.1613/jair.1.14427
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SAlign: A Graph Neural Attention Framework for Aligning Structurally Heterogeneous Networks

Abstract: Network alignment techniques that map the same entities across multiple networks assume that the mapping nodes in two different networks have similar attributes and neighborhood proximity. However, real-world networks often violate such assumptions, having diverse attributes and structural properties. Node mapping across such structurally heterogeneous networks remains a challenge. Although capturing the nodes’ entire neighborhood (in low-dimensional embeddings) may help deal with these characteristic differen… Show more

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