hitsz -红十字国际委员会:2019年SMM4H共享任务报告——推文中不利影响提及的自动分类和提取

Shuai Chen, Yuanhang Huang, Xiao-Ping Huang, Haoming Qin, Jun Yan, Buzhou Tang
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引用次数: 15

摘要

这是哈尔滨工业大学深圳分校(HITSZ)团队对2019年第四届健康应用社交媒体挖掘(SMM4H)共享任务第一、二个子任务的系统描述。这两个子任务是tweets中不利影响提及的自动分类和提取。这两个子任务的系统基于变压器的双向编码器表示(BERT),并取得了令人满意的结果。其中,subtask1的最佳f1得分为0.6457,subtask2的最佳宽松f1得分为0.614,最佳严格f1得分为0.407。我们的系统在子任务1上排名第一。
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HITSZ-ICRC: A Report for SMM4H Shared Task 2019-Automatic Classification and Extraction of Adverse Effect Mentions in Tweets
This is the system description of the Harbin Institute of Technology Shenzhen (HITSZ) team for the first and second subtasks of the fourth Social Media Mining for Health Applications (SMM4H) shared task in 2019. The two subtasks are automatic classification and extraction of adverse effect mentions in tweets. The systems for the two subtasks are based on bidirectional encoder representations from transformers (BERT), and achieves promising results. Among the systems we developed for subtask1, the best F1-score was 0.6457, for subtask2, the best relaxed F1-score and the best strict F1-score were 0.614 and 0.407 respectively. Our system ranks first among all systems on subtask1.
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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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