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Monitoring Public Health Concerns Using Twitter Sentiment Classifications

机译:使用Twitter情感分类监测公共卫生问题

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An important task of public health officials is to keep track of spreading epidemics, and the locations and speed with which they appear. Furthermore, there is interest in understanding how concerned the population is about a disease outbreak. Twitter can serve as an important data source to provide this information in real time. In this paper, we focus on sentiment classification of Twitter messages to measure the Degree of Concern (DOC) of the Twitter users. In order to achieve this goal, we develop a novel two-step sentiment classification workflow to automatically identify personal tweets and negative tweets. Based on this workflow, we present an Epidemic Sentiment Monitoring System (ESMOS) that provides tools for visualizing Twitter users' concern towards different diseases. The visual concern map and chart in ESMOS can help public health officials to identify the progression and peaks of concern for a disease in space and time, so that appropriate preventive actions can be taken. The DOC measure is based on the sentiment-based classifications. We compare clue-based and different Machine Learning methods to classify sentiments of Twitter users regarding diseases, first into personal and neutral tweets and then into negative from neutral personal tweets. In our experiments, Multinomial Naïve Bayes achieved overall the best results and took significantly less time to build the classifier than other methods.
机译:公共卫生官员的一项重要任务是跟踪传播流行病,以及它们出现的地点和速度。此外,有兴趣了解涉及人口对疾病爆发的影响。 Twitter可以作为实时提供此信息的重要数据源。在本文中,我们专注于Twitter消息的情绪分类,以衡量Twitter用户的关注程度(Doc)。为了实现这一目标,我们开发了一种新颖的两步情绪分类工作流程,可以自动识别个人推文和负推文。在此工作流程的基础上,我们介绍了流行性情绪监测系统(ESMOS),提供了可视化推特用户对不同疾病的关注的工具。 ESMOS的视觉关注图和图表可以帮助公共卫生官员确定空间和时间在疾病中关注的进展和峰值,从而可以采取适当的预防措施。 DOC测量基于基于情绪的分类。我们比较基于线索和不同的机器学习方法,将Twitter用户的情绪分类为疾病,首先进入个人和中立的推文,然后从中性个人推文中进行负面。在我们的实验中,多项式Naïve贝叶斯总体上实现了最佳结果,并比其他方法构建分类器的时间明显更少。

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