CoarSAS2hvec: Heterogeneous Information Network Embedding with Balanced Network Sampling
Ling Zhan,
Tao Jia
Abstract:Heterogeneous information network (HIN) embedding aims to find the representations of nodes that preserve the proximity between entities of different nature. A family of approaches that are wildly adopted applies random walk to generate a sequence of heterogeneous context, from which the embedding is learned. However, due to the multipartite graph structure of HIN, hub nodes tend to be overrepresented in the sampled sequence, giving rise to imbalanced samples of the network. Here we propose a new embedding met… Show more
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