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arxiv: 1906.01840 · v1 · pith:6T2ZW2WInew · submitted 2019-06-05 · 💻 cs.CL · cs.LG

Improving Textual Network Embedding with Global Attention via Optimal Transport

classification 💻 cs.CL cs.LG
keywords networkattentionembeddingembeddingsmoduleoptimalsparsetextual
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Constituting highly informative network embeddings is an important tool for network analysis. It encodes network topology, along with other useful side information, into low-dimensional node-based feature representations that can be exploited by statistical modeling. This work focuses on learning context-aware network embeddings augmented with text data. We reformulate the network-embedding problem, and present two novel strategies to improve over traditional attention mechanisms: ($i$) a content-aware sparse attention module based on optimal transport, and ($ii$) a high-level attention parsing module. Our approach yields naturally sparse and self-normalized relational inference. It can capture long-term interactions between sequences, thus addressing the challenges faced by existing textual network embedding schemes. Extensive experiments are conducted to demonstrate our model can consistently outperform alternative state-of-the-art methods.

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