在COVID-19推特聊天中提到的药物特征

Ramya Tekumalla, J. Banda
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引用次数: 9

摘要

自2019冠状病毒病被列为全球大流行以来,人们进行了许多治疗和控制该病毒的尝试。虽然没有针对COVID-19的特定抗病毒治疗建议,但有几种药物可能有助于缓解症状。在这项工作中,我们挖掘了一个包含4.24亿条关于COVID-19的推文的大型推特数据集,以识别围绕药物提及的话语。虽然看起来是一个简单的任务,但由于Twitter中语言使用的非正式性质,我们证明了机器学习和传统自动化方法一起帮助完成这项任务的必要性。通过应用这些补充方法,我们能够恢复近15%的额外数据,使处理拼写错误成为处理社交媒体数据时需要的预处理步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing drug mentions in COVID-19 Twitter Chatter
Since the classification of COVID-19 as a global pandemic, there have been many attempts to treat and contain the virus. Although there is no specific antiviral treatment recommended for COVID-19, there are several drugs that can potentially help with symptoms. In this work, we mined a large twitter dataset of 424 million tweets of COVID-19 chatter to identify discourse around drug mentions. While seemingly a straightforward task, due to the informal nature of language use in Twitter, we demonstrate the need of machine learning alongside traditional automated methods to aid in this task. By applying these complementary methods, we are able to recover almost 15% additional data, making misspelling handling a needed task as a pre-processing step when dealing with social media data.
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