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workshop paper
PolyuCBS at SMM4H 2024: LLM-based Medical Disorder and Adverse Drug Event Detection with Low-rank Adaptation
keywords:
medical disorder detection
adverse drug event normalization
adverse drug event extraction
social media
This is the demonstration of systems and results of our team’s participation in the Social Medi- cal Mining for Health (SMM4H) 2024 Shared Task. Our team participated in two tasks: Task 1 and Task 5. Task 5 requires the detection of tweet sentences that claim children’s medi- cal disorders from certain users. Task 1 needs teams to extract and normalize Adverse Drug Event terms in the tweet sentence. The team selected several Pre-trained Language Models and generative Large Language Models to meet the requirements. Strategies to improve the per- formance include cloze test, prompt engineer- ing, Low Rank Adaptation etc. The test result of our system has an F1 score of 0.935, Preci- sion of 0.954 and Recall of 0.917 in Task 5 and an overall F1 score of 0.08 in Task 1.