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Titlebook: Health Information Processing. Evaluation Track Papers; 9th China Conference Hua Xu,Qingcai Chen,Hui Zong Conference proceedings 2024 The E

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Conference proceedings 2024angzhou, China, during October 27–29, 2023. The 15 algorithms papers and 6 overview papers included in this book were carefully reviewed and selected from a total of 66 submissions to the conference. They were organized in topical sections as follows: CHIP-PromptCBLUE Medical Large Model Evaluation;
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Overview of the PromptCBLUE Shared Task in CHIP2023, and provide a good testbed for Chinese open-domain or medical-domain large language models (LLMs) in general medical natural language processing. Two different tracks are held: (a) prompt tuning track, investigating the multitask prompt tuning of LLMs, (b) probing the in-context learning capabilit
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CMed-Baichuan: Task Explanation-Enhanced Prompt Method on PromptCBLUE Benchmarkowledge-intensive nature of the medical field, previous studies proposed various fine-tuning methods and fine-tuned domain LLMs to align the general LLMs into specific domains. However, they ignored the difficulty of understanding the medical task requirements, that is LLMs are expected to give answ
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Improving LLM-Based Health Information Extraction with In-Context Learningansformed into prompt based language generation tasks. On the other hand, LLM can also achieve superior results on brand new tasks without fine-tuning, solely with a few in-context examples. This paper describes our participation in the China Health Information Processing Conference (CHIP 2023). We
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Similarity-Based Prompt Construction for Large Language Model in Medical Taskstential of using LLM to unify diverse NLP tasks into a text generative manner. In order to explore the potential of LLM for In-Context Learning in Chinese Medical field, the 9th China Health Information Processing Conference (CHIP 2023) has released a non-tuning LLM evaluation task called PromptCBLU
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CMF-NERD: Chinese Medical Few-Shot Named Entity Recognition Dataset with State-of-the-Art Evaluationical NER datasets available. The difficulty to share private data and varying specifications presented pose a challenge to this research. In this paper, We merged and cleaned multiple sources of Chinese medical NER dataset, then restructured these data into few-shot settings. CMF-NERD was constructe
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