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Who caught a cold? - Identifying the subject of a symptom

机译:谁感冒了? - 识别症状的主题

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The development and proliferation of social media services has led to the emergence of new approaches for surveying the population and addressing social issues. One popular application of social media data is health surveillance, e.g., predicting the outbreak of an epidemic by recognizing diseases and symptoms from text messages posted on social media platforms. In this paper, we propose a novel task that is crucial and generic from the viewpoint of health surveillance: estimating a subject (carrier) of a disease or symptom mentioned in a Japanese tweet. By designing an annotation guideline for labeling the subject of a disease/symptom in a tweet, we perform annotations on an existing corpus for public surveillance. In addition, we present a supervised approach for predicting the subject of a disease/symptom. The results of our experiments demonstrate the impact of subject identification on the effective detection of an episode of a disease/symptom. Moreover, the results suggest that our task is independent of the type of disease/symptom.
机译:社交媒体服务的发展和扩散导致了对调查人口和解决社会问题的新方法的出现。一种流行的社交媒体数据应用是健康监测,例如,通过识别在社交媒体平台上发布的短信中的疾病和症状来预测疫情的爆发。在本文中,我们提出了一种新的任务,即从健康监测的角度来看是至关重要的,并且估计日本推文中提到的疾病或症状的主题(载体)。通过设计用于在推文中标记疾病/症状的主题的注释指南,我们对现有的公共监督进行了诠释。此外,我们提出了一种预测疾病/症状主体的监督方法。我们的实验结果表明了主题鉴定对有效检测疾病/症状集的影响。此外,结果表明,我们的任务与疾病/症状的类型无关。

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