Leveraging Sentiment Distributions to Distinguish Figurative From Literal Health Reports on Twitter

Rhys Biddle, Aditya Joshi, Shaowu Liu, Cécile Paris, Guandong Xu
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引用次数: 27

Abstract

Harnessing data from social media to monitor health events is a promising avenue for public health surveillance. A key step is the detection of reports of a disease (referred to as ‘health mention classification’) amongst tweets that mention disease words. Prior work shows that figurative usage of disease words may prove to be challenging for health mention classification. Since the experience of a disease is associated with a negative sentiment, we present a method that utilises sentiment information to improve health mention classification. Specifically, our classifier for health mention classification combines pre-trained contextual word representations with sentiment distributions of words in the tweet. For our experiments, we extend a benchmark dataset of tweets for health mention classification, adding over 14k manually annotated tweets across diseases. We also additionally annotate each tweet with a label that indicates if the disease words are used in a figurative sense. Our classifier outperforms current SOTA approaches in detecting both health-related and figurative tweets that mention disease words. We also show that tweets containing disease words are mentioned figuratively more often than in a health-related context, proving to be challenging for classifiers targeting health-related tweets.
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利用情感分布来区分Twitter上的健康报告
利用来自社交媒体的数据来监测卫生事件是公共卫生监测的一个有希望的途径。关键的一步是在提及疾病词汇的tweet中检测疾病报告(称为“健康提及分类”)。先前的工作表明,疾病词的比喻用法可能被证明是健康提及分类的挑战。由于疾病的经历与负面情绪相关,我们提出了一种利用情绪信息来改进健康提及分类的方法。具体来说,我们的健康提及分类器将预先训练的上下文单词表示与tweet中单词的情感分布相结合。在我们的实验中,我们扩展了tweet的基准数据集,用于健康提及分类,在疾病中添加了超过14k条手动注释的tweet。此外,我们还在每条tweet上标注了一个标签,以指示是否在比喻意义上使用疾病词。我们的分类器在检测与健康相关的和提到疾病词的比喻性推文方面优于当前的SOTA方法。我们还表明,包含疾病词的推文比与健康相关的上下文更常被象征性地提及,这证明了针对与健康相关的推文的分类器具有挑战性。
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