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README.md
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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.
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**Currently, TCMRoBERTa is just a closed
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# How to use
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## Training data
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This model was fine-tuned on
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Abbreviation|Description
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I-方剂 | Prescription entity
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B-本草 |Beginning of a herb entity right after another herb entity
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I-本草 |Herb entity
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B-来源 |Beginning of a
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I-来源 |Source entity
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B-病名 |Beginning of a disease's name right after another disease's name
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I-病名 |Disease's name
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# Bonus
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All of our TCM domain models will be open-sourced soon, including:
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1. pre-trained models
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2. Named entity recognition
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3. Text localization
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4. OCR for ancient images
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And so on
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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.
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**Currently, TCMRoBERTa is just a closed-source model for my own company and will be open-source in the future.**
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# How to use
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## Training data
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This model was fine-tuned on MY DATASET.
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Abbreviation|Description
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I-方剂 | Prescription entity
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B-本草 |Beginning of a herb entity right after another herb entity
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I-本草 |Herb entity
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B-来源 |Beginning of a source of prescription right after another source of prescription
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I-来源 |Source entity
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B-病名 |Beginning of a disease's name right after another disease's name
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I-病名 |Disease's name
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# Bonus
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All of our TCM domain models will be open-sourced soon, including:
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1. A series of pre-trained models
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2. Named entity recognition for TCM
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3. Text localization in ancient images
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4. OCR for ancient images
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And so on
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