MSA:联合检测具有多头自关注的药品名称和药品不良反应提及推文

Chuhan Wu, Fangzhao Wu, Zhigang Yuan, Junxin Liu, Yongfeng Huang, Xing Xie
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引用次数: 8

摘要

Twitter是一个流行的信息共享和传播的社交媒体平台。许多推特用户发布推文,分享他们关于药物和药物不良反应的经历。自动检测大规模提及药物名称和药物不良反应的推文具有药物警戒等重要应用。然而,检测提及药物名称和药物不良反应的tweet非常具有挑战性,因为tweet通常非常嘈杂和非正式,并且存在大量拼写错误和用户创建的这些提及的缩写。此外,这些提及通常依赖于上下文。在本文中,我们提出了一种基于分层推文表示和多头自注意机制的神经网络方法来联合检测提及药物名称和药物不良反应的推文。为了减轻推文中大量拼写错误和用户自定义缩写的影响,我们提出使用分层推文表示模型,首先从字符中学习单词表示,然后从单词中学习推文表示。此外,我们建议使用多头自注意机制来捕捉词与词之间的相互作用,以充分模拟推文的上下文。此外,我们使用加性注意机制来选择信息词,以学习更多信息的tweet表示。实验结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MSA: Jointly Detecting Drug Name and Adverse Drug Reaction Mentioning Tweets with Multi-Head Self-Attention
Twitter is a popular social media platform for information sharing and dissemination. Many Twitter users post tweets to share their experiences about drugs and adverse drug reactions. Automatic detection of tweets mentioning drug names and adverse drug reactions at a large scale has important applications such as pharmacovigilance. However, detecting drug name and adverse drug reaction mentioning tweets is very challenging, because tweets are usually very noisy and informal, and there are massive misspellings and user-created abbreviations for these mentions. In addition, these mentions are usually context dependent. In this paper, we propose a neural approach with hierarchical tweet representation and multi-head self-attention mechanism to jointly detect tweets mentioning drug names and adverse drug reactions. In order to alleviate the influence of massive misspellings and user-created abbreviations in tweets, we propose to use a hierarchical tweet representation model to first learn word representations from characters and then learn tweet representations from words. In addition, we propose to use multi-head self-attention mechanism to capture the interactions between words to fully model the contexts of tweets. Besides, we use additive attention mechanism to select the informative words to learn more informative tweet representations. Experimental results validate the effectiveness of our approach.
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