Fig. 1. System Architecture of Named Entity Recognition Using Bi-LSTM-CNN-CRF
Fig. 2. CNN-extracted char features
Fig. 3. Bi-LSTM-CRF
Fig. 4. Extract data and Create morpheme unit
Fig. 5. Results using Traditional culture Corpus
Fig. 6. Results using Traditional culture Corpus2
Fig. 7. Incorrect tagged NER system
Table 1. Category and Tag ratio among total corpus
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