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A Machine Learning Approach for Disease Surveillance and Visualization using Twitter Data

机译:使用Twitter数据的疾病监测和可视化的机器学习方法

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Insights from real-time disease surveillance systems are very useful for the public to take preventive measures against the diseases and it also benefits the pharmaceutical manufacturers in improving the sales of medicines for the particular disease and ensuring adequate availability of medicines when they are needed.A disease outbreak is an event wherein there is a rise in the number of positive cases for a disease in a short span of time. An outbreak can be limited to a particular region or time of the year. Diseases can be detected by several approaches, social media being preferred method due to availability of real-time data. Hence, data from social media, especially Twitter can be used to detect live events and monitor them efficiently. In order to detect diseases precisely, this paper proposes an approach wherein tweets, which are collected and pre-processed, can be effectively vectorized and clustered into the appropriate diseases with the use Agglomerative Clustering technique. The tweets can also be visualized using their geo information in order to generate zones which have high density of diseases. Such a surveillance system can be of use for early prediction of disease outbreaks, in turn facilitating faster and better handling of the situation.
机译:实时疾病监测系统的见解对于公众对疾病的预防措施非常有用,它也有利于药品制造商改善特定疾病的药物的销售,并确保在需要时确保药物充分可用性.A疾病爆发是一种事件,其中在短时间内疾病的阳性病例数量增加。爆发可以限于年度特定的区域或时间。可以通过几种方法来检测疾病,社交媒体是优选的方法,因为实时数据的可用性。因此,来自社交媒体的数据,尤其是Twitter可用于检测实时事件并有效监控它们。为了精确地检测疾病,本文提出了一种方法,其中收集和预处理的推特可以有效地向载体化并聚集到具有使用附聚类聚类技术的适当疾病中。还可以使用其Geo信息可视化推文,以便生成具有高密度疾病的区域。这种监视系统可以用于早期预测疾病爆发,促进更快,更好地处理情况。

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