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BERT based Transformers lead the way in Extraction of Health Information from Social Media

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arxiv 2104.07367 v1 pith:ZUBDNLML submitted 2021-04-15 cs.CL cs.SI

BERT based Transformers lead the way in Extraction of Health Information from Social Media

classification cs.CL cs.SI
keywords classificationsubmissionstasksbertweetextractionf1-scorefirsthealth
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper describes our submissions for the Social Media Mining for Health (SMM4H)2021 shared tasks. We participated in 2 tasks:(1) Classification, extraction and normalization of adverse drug effect (ADE) mentions in English tweets (Task-1) and (2) Classification of COVID-19 tweets containing symptoms(Task-6). Our approach for the first task uses the language representation model RoBERTa with a binary classification head. For the second task, we use BERTweet, based on RoBERTa. Fine-tuning is performed on the pre-trained models for both tasks. The models are placed on top of a custom domain-specific processing pipeline. Our system ranked first among all the submissions for subtask-1(a) with an F1-score of 61%. For subtask-1(b), our system obtained an F1-score of 50% with improvements up to +8% F1 over the score averaged across all submissions. The BERTweet model achieved an F1 score of 94% on SMM4H 2021 Task-6.

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