使用BioBERT嵌入识别推文中提到的个人健康经验的神经网络

Shubham Gondane
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引用次数: 5

摘要

本文描述了由ASU-NLP团队为健康应用的社交媒体挖掘(SMM4H)共享任务4开发的系统。我们从BioBERT (Lee et al., 2019)模型中提取特征嵌入,该模型已经在训练数据集上进行了微调,并将其用作密集全连接神经网络的输入。我们在参与者系统中取得了高于平均水平的成绩,总体f1得分、准确率、精密度、召回率分别为0.8036、0.8456、0.9783、0.6818。
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Neural Network to Identify Personal Health Experience Mention in Tweets Using BioBERT Embeddings
This paper describes the system developed by team ASU-NLP for the Social Media Mining for Health Applications(SMM4H) shared task 4. We extract feature embeddings from the BioBERT (Lee et al., 2019) model which has been fine-tuned on the training dataset and use that as inputs to a dense fully connected neural network. We achieve above average scores among the participant systems with the overall F1-score, accuracy, precision, recall as 0.8036, 0.8456, 0.9783, 0.6818 respectively.
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Approaching SMM4H with Merged Models and Multi-task Learning BIGODM System in the Social Media Mining for Health Applications Shared Task 2019 HITSZ-ICRC: A Report for SMM4H Shared Task 2019-Automatic Classification and Extraction of Adverse Effect Mentions in Tweets Lexical Normalization of User-Generated Medical Text Towards Text Processing Pipelines to Identify Adverse Drug Events-related Tweets: University of Michigan @ SMM4H 2019 Task 1
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