--- license: apache-2.0 tags: - Token Classification language: - zh --- ## Model description This model is a fine-tuned version of bert-base-chinese for the purpose of medicine name recognition. We fine-tuned bert-base-chinese on a 500M dataset including 100K+ authorized medical articles on which we labeled all the standard medicine names. The model achieves 92% accuracy on our test dataset. ## Intended use ```python >>> from transformers import (AutoModelForTokenClassification, AutoTokenizer) >>> from transformers import pipeline >>> hub_model_id = "9pinus/macbert-base-chinese-medicine-recognition" >>> model = AutoModelForTokenClassification.from_pretrained(hub_model_id) >>> tokenizer = AutoTokenizer.from_pretrained(hub_model_id) >>> classifier = pipeline('ner', model=model, tokenizer=tokenizer) >>> result = classifier("如果病情较重,可适当口服甲硝唑片、环酯红霉素片、吲哚美辛片等药物进行抗感染镇痛。") >>> for item in result: >>> if item['entity'] == 1 or item['entity'] == 2: >>> print(item) {'entity': 1, 'score': 0.99999595, 'index': 13, 'word': '甲', 'start': 12, 'end': 13} {'entity': 2, 'score': 0.9999957, 'index': 14, 'word': '硝', 'start': 13, 'end': 14} {'entity': 2, 'score': 0.99999166, 'index': 15, 'word': '唑', 'start': 14, 'end': 15} {'entity': 2, 'score': 0.99898833, 'index': 16, 'word': '片', 'start': 15, 'end': 16} {'entity': 1, 'score': 0.9999864, 'index': 18, 'word': '环', 'start': 17, 'end': 18} {'entity': 2, 'score': 0.99999404, 'index': 19, 'word': '酯', 'start': 18, 'end': 19} {'entity': 2, 'score': 0.99999475, 'index': 20, 'word': '红', 'start': 19, 'end': 20} {'entity': 2, 'score': 0.9999964, 'index': 21, 'word': '霉', 'start': 20, 'end': 21} {'entity': 2, 'score': 0.9999951, 'index': 22, 'word': '素', 'start': 21, 'end': 22} {'entity': 2, 'score': 0.9990088, 'index': 23, 'word': '片', 'start': 22, 'end': 23} {'entity': 1, 'score': 0.9999975, 'index': 25, 'word': '吲', 'start': 24, 'end': 25} {'entity': 2, 'score': 0.9999957, 'index': 26, 'word': '哚', 'start': 25, 'end': 26} {'entity': 2, 'score': 0.9999945, 'index': 27, 'word': '美', 'start': 26, 'end': 27} {'entity': 2, 'score': 0.9999933, 'index': 28, 'word': '辛', 'start': 27, 'end': 28} {'entity': 2, 'score': 0.99949837, 'index': 29, 'word': '片', 'start': 28, 'end': 29} ``` ## Training and evaluation data ### Framework versions - Transformers 4.15.0 - Pytorch 1.10.1+cu113 - Datasets 1.17.0 - Tokenizers 0.10.3