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Medicinal Side-Effect Analysis Using Twitter Feed

机译:使用Twitter Feed进行药用副作用分析

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摘要

As the use of social media network has been increasing, people tend to share health-related information on social sites. Twitter is used by large number of users and it is a wide source of information to analyze the drug related side effect. In this paper, we have developed an approach to analyze the contents of tweets to identify the adverse effects of a drug. An annotated dataset is used to train SVM classifier to identify the tweets showcasing medicinal side effects. The use of feature selection and dimensionality reduction techniques have allowed us to enhance the performance of the classifier in terms of accuracy by 10.34% as well as efficiency by nearly 66.31% as compared to the previous similar approaches.
机译:随着社交媒体网络的使用一直在增加,人们倾向于分享关于社交场所的健康信息。推特由大量用户使用,并且是分析药物相关副作用的广泛信息来源。在本文中,我们开发了一种方法来分析推特的内容以识别药物的不良反应。注释的数据集用于训练SVM分类器以识别展示药用副作用的推文。使用特征选择和维数减少技术使我们能够在准确度提高分类器的性能10.34%,而与以前的类似方法相比,效率近66.31%。

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