--- license: apache-2.0 language: - zh tags: - NER - TCM - Traditional Chinese Medicine - medical widget: - text: "化滞汤,出处:《证治汇补》卷八。。组成:青皮20g,陈皮20g,厚朴20g,枳实20g,黄芩20g,黄连20g,当归20g,芍药20g,木香5g,槟榔8g,滑石3g,甘草4g。。主治:下痢因于食积气滞者。" example_title: "Example 1" --- # TCMNER [About Author](https://github.com/huangxinping). [Our Products](https://zhongyigen.com) # Model description TCMNER is a fine-tuned BERT model that is ready to use for Named Entity Recognition of Traditional Chinese Medicine and achieves state-of-the-art performance for the NER task. It has been trained to recognize six types of entities: prescription (方剂), herb (本草), source (来源), disease (病名), symptom (症状) and syndrome(证型). Specifically, this model is a TCMRoBERTa model, a fine-tuned model of RoBERTa for Traditional Chinese medicine, that was fine-tuned on the Chinese version of the [Haiwei AI Lab](https://www.haiweikexin.com/)'s Named Entity Recognition dataset. **Currently, TCMRoBERTa is just a closed-source model for my own company and will be open-source in the future.** # How to use You can use this model with Transformers pipeline for NER. ``` from transformers import AutoTokenizer, AutoModelForTokenClassification from transformers import pipeline tokenizer = AutoTokenizer.from_pretrained("Monor/TCMNER") model = AutoModelForTokenClassification.from_pretrained("Monor/TCMNER") nlp = pipeline("ner", model=model, tokenizer=tokenizer) example = "化滞汤,出处:《证治汇补》卷八。。组成:青皮20g,陈皮20g,厚朴20g,枳实20g,黄芩20g,黄连20g,当归20g,芍药20g,木香5g,槟榔8g,滑石3g,甘草4g。。主治:下痢因于食积气滞者。" ner_results = nlp(example) print(ner_results) ``` ## Training data This model was fine-tuned on MY DATASET. Abbreviation|Description -|- O|Outside of a named entity B-方剂 |Beginning of a prescription entity right after another prescription entity I-方剂 | Prescription entity B-本草 |Beginning of a herb entity right after another herb entity I-本草 |Herb entity B-来源 |Beginning of a source of prescription right after another source of prescription I-来源 |Source entity B-病名 |Beginning of a disease's name right after another disease's name I-病名 |Disease's name B-症状 |Beginning of a symptom right after another symptom I-症状 |Symptom B-证型 |Beginning of a syndrome right after another syndrome I-证型 |Syndrome # Eval results ![alt text](images/iShot_2024-06-07_18.03.00.png "Title") # Notices 1. The model is commercially available for free. 2. I am not going to write a paper about this model, if you use any details in your paper, please mention it, thanks. --- # Bonus All of our TCM domain models will be open-sourced soon, including: 1. A series of pre-trained models 2. Named entity recognition for TCM 3. Text localization in ancient images 4. OCR for ancient images And so on