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Attention-aware heterogeneous graph neural network
2021
Big Data Mining and Analytics
As a powerful tool for elucidating the embedding representation of graph-structured data, Graph Neural Networks (GNNs), which are a series of powerful tools built on homogeneous networks, have been widely used in various data mining tasks. It is a huge challenge to apply a GNN to an embedding Heterogeneous Information Network (HIN). The main reason for this challenge is that HINs contain many different types of nodes and different types of relationships between nodes. HIN contains rich semantic
doi:10.26599/bdma.2021.9020008
fatcat:ceew7ktk7vhy7gxiesgouomiaq