Edinburgh_UCL_Health@SMM4H'22:从手套到Flair处理与药物不良事件,药物变化和自我报告疫苗接种相关的不平衡保健语料库。

Imane Guellil, Jinge Wu, Honghan Wu, Tony Sun, Beatrice Alex
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引用次数: 0

摘要

本文报告了Edin-burgh_UCL_Health模型在社交媒体挖掘健康(SMM4H) 2022共享任务中的性能。我们小组参与了药物不良事件识别(ADEs)、药物变化分类(change-med)和疫苗接种自我报告分类(self-vaccine)的相关任务。我们表现最好的模型是基于DeepADEM-iner (ADE识别的F1分别为0.64、0.62和0.39),基于在Twitter上训练的GloVe模型(对于changemed, F1=0.11),最后是基于一个堆栈嵌入,包括一层GloVe嵌入和两层Flair嵌入(self - port, F1= 0.77)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Edinburgh_UCL_Health@SMM4H'22: From Glove to Flair for handling imbalanced healthcare corpora related to Adverse Drug Events, Change in medication and self-reporting vaccination.

This paper reports on the performance of Edin-burgh_UCL_Health's models in the Social Media Mining for Health (SMM4H) 2022 shared tasks. Our team participated in the tasks related to the Identification of Adverse Drug Events (ADEs), the classification of change in medication (change-med) and the classification of selfreport of vaccination (self-vaccine). Our best performing models are based on DeepADEM-iner (with respective F1= 0.64, 0.62 and 0.39 for ADE identification), on a GloVe model trained on Twitter (with F1=0.11 for the changemed) and finally on a stack embedding including a layer of Glove embedding and two layers of Flair embedding (with F1= 0.77 for selfreport).

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