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Learning Meta Representations of One-shot Relations for Temporal Knowledge Graph Link Prediction (2205.10621v2)

Published 21 May 2022 in cs.LG and cs.AI

Abstract: Few-shot relational learning for static knowledge graphs (KGs) has drawn greater interest in recent years, while few-shot learning for temporal knowledge graphs (TKGs) has hardly been studied. Compared to KGs, TKGs contain rich temporal information, thus requiring temporal reasoning techniques for modeling. This poses a greater challenge in learning few-shot relations in the temporal context. In this paper, we follow the previous work that focuses on few-shot relational learning on static KGs and extend two fundamental TKG reasoning tasks, i.e., interpolated and extrapolated link prediction, to the one-shot setting. We propose four new large-scale benchmark datasets and develop a TKG reasoning model for learning one-shot relations in TKGs. Experimental results show that our model can achieve superior performance on all datasets in both TKG link prediction tasks.

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Authors (5)
  1. Zifeng Ding (26 papers)
  2. Bailan He (12 papers)
  3. Yunpu Ma (57 papers)
  4. Zhen Han (54 papers)
  5. Volker Tresp (158 papers)
Citations (9)

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