Corpus ID: 56482412

TechKG: A Large-Scale Chinese Technology-Oriented Knowledge Graph

  title={TechKG: A Large-Scale Chinese Technology-Oriented Knowledge Graph},
  author={Feiliang Ren and Yi Ju Hou and Yan Li and Lingfeng Pan and Yi Zhang and Xiaobo Liang and Yongkang Liu and Yu Guo and Rongsheng Zhao and Ruicheng Ming and Huiming Wu},
Knowledge graph is a kind of valuable knowledge base which would benefit lots of AI-related applications. Up to now, lots of large-scale knowledge graphs have been built. However, most of them are non-Chinese and designed for general purpose. In this work, we introduce TechKG, a large scale Chinese knowledge graph that is technology-oriented. It is built automatically from massive technical papers that are published in Chinese academic journals of different research domains. Some carefully… Expand
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