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Fine-Tuning Transformers for Identifying Self-Reporting Potential Cases and Symptoms of COVID-19 in Tweets

机译:微调变压器2019冠状病毒疾病报告

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We describe our straight-forward approach for Tasks 5 and 6 of 2021 Social Media Mining for Health Applications (SMM4H) shared tasks. Our system is based on fine-tuning Distill-BERT on each task, as well as first fine-tuning the model on the other task. We explore how much fine-tuning is necessary for accurately classifying tweets as containing self-reported COVID-19 symptoms (Task 5) or whether a tweet related to COVID-19 is self-reporting, non-personal reporting, or a literature/news mention of the virus (Task 6).
机译:我们描述了针对健康应用(SMM4H)共享任务的2021个社交媒体挖掘的任务5和6的直截了当的方法。我们的系统基于对每个任务进行微调提取,以及对另一个任务的模型进行微调。我们探讨了多少微调是必要的,准确地分类鸣叫包含自我报告的COVID-19症状(任务5),或是否与COVID-19相关的推特是自我报告,非个人报告,或文献/新闻提及病毒(任务6)。

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