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Recurrent One-Hop Predictions for Reasoning over Knowledge Graphs

  • author: Wenpeng Yin, Yadollah Yaghoobzadeh, Hinrich Schütze
  • abstract: Large scale knowledge graphs (KGs) such as Freebase are generally incomplete. Reasoning over multi-hop (mh) KG paths is thus an important capability that is needed for question answering or other NLP tasks that require knowledge about the world. mh-KG reasoning includes diverse scenarios, e.g., given a head entity and a relation path, predict the tail entity; or given two entities connected by some relation paths, predict the unknown relation between them. We present ROPs, recurrent one-hop predictors, that predict entities at each step of mh-KB paths by using recurrent neural networks and vector representations of entities and relations, with two benefits: (i) modeling mh-paths of arbitrary lengths while updating the entity and relation representations by the training signal at each step; (ii) handling different types of mh-KG reasoning in a unified framework. Our models show state-of-the-art for two important multi-hop KG reasoning tasks: Knowledge Base Completion and Path Query Answering
  • keywords: multi-hop KG reasoning
  • interpretation: 来源: 暂无
  • pdf: link
  • code: link
  • dataset:mh-PQA, mh-KBC
  • ppt/video:
  • curation: Jiong Zhang