2019年度 人工知能学会全国大会(第33回)

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国際セッション » [ES] E-1 Knowledge engineering

[1K4-E-1] Knowledge engineering

2019年6月4日(火) 17:20 〜 19:00 K会場 (201A 中会議室)

座長: 岡本 一志(電気通信大学)、評者: 高間 康史(首都大学東京)

18:40 〜 19:00

[1K4-E-1-05] CTransE : Confidence-Based Translation Model for Uncertain Knowledge Graph Embedding

〇Natthawut Kertkeidkachorn1,2, Xin Liu1, Ryutaro Ichise2,1 (1. National Institute of Advanced Industrial Science and Technology, 2. National Institute of Informatics)

キーワード:Knowledge Graph, Knowledge Graph Embedding, Uncertainty

Knowledge graphs play an important role in many AI applications such as fact checking. Many studies focused on learning representations of a knowledge graph in a low-dimensional continuous vector space. However, most of the recent studies do not learn embedding representations on uncertain knowledge graphs. Uncertain knowledge graphs, e.g., NELL and Knowledge Vault, are valuable because they can automatically populate themselves with new facts. Nevertheless, the automatic process basically induces uncertainty to knowledge. In this study, we introduced knowledge graph embedding on uncertain knowledge graphs by using adapting confidence-margin-based loss function for translation-based models, namely CTransE, to deal with uncertainty on knowledge graphs. The results show that CTransE can robustly learn representations of uncertain knowledge graphs and outperforms the conventional method on knowledge graph completion task.