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Using Natural Language Processing to Extract Health-Related Causality from Twitter Messages

机译:使用自然语言处理从Twitter消息中提取与健康相关的因果关系

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Twitter messages (tweets) contain various types of information, which include health-related information. Analysis of health-related tweets would help us understand health conditions and concerns encountered in our daily life. In this work, we evaluated an approach to extracting causal relations from tweets using natural language processing (NLP) techniques. We focused on three health-related topics: stress", "insomnia", and "headache". We proposed a set of lexico-syntactic patterns based on dependency parser outputs to extract causal information. A large dataset consisting of 24 million tweets were used. The results show that our approach achieved an average precision between 74.59% and 92.27%. Analysis of extracted relations revealed interesting findings about health-related in Twitter".
机译:Twitter消息(推文)包含各种类型的信息,其中包括与健康相关的信息。对健康相关推文的分析将有助于我们了解健康状况和日常生活中遇到的问题。在这项工作中,我们评估了一种使用自然语言处理(NLP)技术从推文中提取因果关系的方法。我们重点研究了与健康有关的三个主题:“压力”,“失眠”和“头痛”。我们根据依赖解析器的输出提出了一套词汇语法模式,以提取因果关系信息,并使用了由2400万条推文组成的大型数据集结果表明,我们的方法的平均精度在74.59%到92.27%之间。对提取关系的分析揭示了有关Twitter中与健康相关的有趣发现。

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