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Deep Gramulator: Improving Precision in the Classification of Personal Health-Experience Tweets with Deep Learning

机译:深层思考者:提高在深入学习的个人健康体验推文的分类中提高精度

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Health surveillance is an important task to track the happenings related to human health, and one of its areas is pharmacovigilance. Pharmacovigilance tracks and monitors safe use of pharmaceutical products. Pharmacovigilance involves tracking side effects that may be caused by medicines and other health related drugs. Medical professionals have a difficult time collecting this information. It is anticipated that social media could help to collect this data and track side effects. Twitter data can be used for this task given that users post their personal health related experiences on-line. One problem with Twitter data, however, is that it contains a lot of noise. Therefore, an approach is needed to remove the noise. In this paper, several machine learning algorithms including deep neural nets are used to build classifiers that can help to detect these Personal Experience Tweets (PETs). Finally, we propose a method called the Deep Gramulator that improves results. Results of the analysis are presented and discussed.
机译:卫生监测是跟踪与人类健康有关的事件的重要任务,其领域的一个是药物文理。药物检测轨道和监视器安全使用药品。药物检测涉及跟踪可能是由药物和其他健康相关药物引起的副作用。医疗专业人员难以收集此信息。预计社交媒体可能有助于收集此数据并跟踪副作用。如果用户在线发布相关经验,则可以使用Twitter数据来用于此任务。然而,Twitter数据的一个问题是它包含大量噪音。因此,需要一种方法来消除噪声。在本文中,包括深神经网络的多种机器学习算法用于构建可以帮助检测这些个人体验推文(宠物)的分类器。最后,我们提出了一种称为深层格拉伯特的方法,提高了结果。提出和讨论了分析结果。

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