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MetaFill: Text Infilling for Meta-Path Generation on Heterogeneous Information Networks (2210.07488v1)

Published 14 Oct 2022 in cs.CL

Abstract: Heterogeneous Information Network (HIN) is essential to study complicated networks containing multiple edge types and node types. Meta-path, a sequence of node types and edge types, is the core technique to embed HINs. Since manually curating meta-paths is time-consuming, there is a pressing need to develop automated meta-path generation approaches. Existing meta-path generation approaches cannot fully exploit the rich textual information in HINs, such as node names and edge type names. To address this problem, we propose MetaFill, a text-infilling-based approach for meta-path generation. The key idea of MetaFill is to formulate meta-path identification problem as a word sequence infilling problem, which can be advanced by Pretrained LLMs (PLMs). We observed the superior performance of MetaFill against existing meta-path generation methods and graph embedding methods that do not leverage meta-paths in both link prediction and node classification on two real-world HIN datasets. We further demonstrated how MetaFill can accurately classify edges in the zero-shot setting, where existing approaches cannot generate any meta-paths. MetaFill exploits PLMs to generate meta-paths for graph embedding, opening up new avenues for LLM applications in graph analysis.

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Authors (6)
  1. Zequn Liu (14 papers)
  2. Kefei Duan (3 papers)
  3. Junwei Yang (17 papers)
  4. Hanwen Xu (16 papers)
  5. Ming Zhang (313 papers)
  6. Sheng Wang (239 papers)

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