A review: Knowledge reasoning over knowledge graph

@article{Chen2020ARK,
  title={A review: Knowledge reasoning over knowledge graph},
  author={Xiaojun Chen and Shengbin Jia and Yang Xiang},
  journal={Expert Syst. Appl.},
  year={2020},
  volume={141}
}
Abstract Mining valuable hidden knowledge from large-scale data relies on the support of reasoning technology. Knowledge graphs, as a new type of knowledge representation, have gained much attention in natural language processing. Knowledge graphs can effectively organize and represent knowledge so that it can be efficiently utilized in advanced applications. Recently, reasoning over knowledge graphs has become a hot research topic, since it can obtain new knowledge and conclusions from… Expand
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