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README.md
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size_categories:
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---
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# KorMedMCQA : Multi-Choice Question Answering Benchmark for Korean Healthcare Professional Licensing Examinations
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We introduce KorMedMCQA, the first Korean multiple-choice question answering (MCQA) benchmark derived from Korean healthcare professional licensing examinations, covering from the year 2012 to year 2023.
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This dataset consists of a selection of questions from the license examinations for doctors, nurses, and pharmacists, featuring a diverse array of subjects.
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We conduct baseline experiments on various large language models, including proprietary/open-source, multilingual/Korean-additional pretrained, and clinical context pretrained models, highlighting the potential for further enhancements.
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We make our data publicly available on HuggingFace and provide a evaluation script via LM-Harness, inviting further exploration and advancement in Korean healthcare environments.
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Paper : https://arxiv.org/abs/2403.01469
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## Dataset Details
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### Languages
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Korean
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### Subtask
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```
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from datasets import load_dataset
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doctor = load_dataset(path = "sean0042/KorMedMCQA",name = "doctor")
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nurse = load_dataset(path = "sean0042/KorMedMCQA",name = "nurse")
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pharmacist = load_dataset(path = "sean0042/KorMedMCQA",name = "pharm")
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```
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### Statistics
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| Category | # Questions (Train/Dev/Test) |
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|------------------------------|------------------------------|
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| Doctor | 2,339 (1,890/164/285) |
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| Nurse | 1,460 (582/291/587) |
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| Pharmacist | 1,546 (632/300/614) |
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### Data Fields
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- `subject`: doctor, nurse, or pharm
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- `year`: year of the examination
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- `period`: period of the examination
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- `q_number`: question number of the examination
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- `question`: question
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- `A`: First answer choice
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- `B`: Second answer choice
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- `C`: Third answer choice
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- `D`: Fourth answer choice
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- `E`: Fifth answer choice
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- `answer` : Answer (1 to 5). 1 denotes answer A, and 5 denotes answer E
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## Contact
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```
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```
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