WebChild 2.0 : Fine-Grained Commonsense Knowledge Distillation

@inproceedings{Tandon2017WebChild2,
  title={WebChild 2.0 : Fine-Grained Commonsense Knowledge Distillation},
  author={Niket Tandon and Gerard de Melo and Gerhard Weikum},
  booktitle={ACL},
  year={2017}
}
Despite important progress in the area of intelligent systems, most such systems still lack commonsense knowledge that appears crucial for enabling smarter, more human-like decisions. In this paper, we present a system based on a series of algorithms to distill fine-grained disambiguated commonsense knowledge from massive amounts of text. Our WebChild 2.0 knowledge base is one of the largest commonsense knowledge bases available, describing over 2 million disambiguated concepts and activities… CONTINUE READING

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