Information-Extraction-Chinese - Chinese Named Entity Recognition with IDCNN/biLSTM+CRF, and Relation Extraction with biGRU+2ATT 中文实体识别与关系提取

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Chinese information extraction, including named entity recognition, relation extraction and more, focused on state-of-art deep learning methods.

https://github.com/crownpku/Information-Extraction-Chinese

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