Topic Modelling for Identification of Vaccine Reactions in Twitter

Sedigheh Khademi Habibabadi, P. D. Haghighi
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引用次数: 22

Abstract

Background: Detection of vaccine safety signals depends on various established reporting systems, where there is inevitably a lag between an adverse reaction to a vaccine and the reporting of it, and subsequent processing of reports. Therefore, it is desirable to try and detect safety signals earlier, ideally close to real-time. Extensive use of social media has provided a platform for sharing and seeking health-related information, and the immediacy of social media conversations mean that they are an ideal candidate for early detection of vaccine safety signals. The objective of this study is to evaluate topic models for identifying user posts on Twitter that most likely contain vaccine safety signals. This is an initial step in the overall research to determine if reliable vaccine safety signals can be detected in social media streams. The techniques used were focused on identifying the model design and number of topics that best revealed documents that contained vaccine safety signals, to assist with dimension reduction and subsequent labelling of the text data. The study compared Gensim LDA, MALLET, and jLDADMM DMM models to determine the most effective model for detecting vaccine safety signals, assisted by an evaluation process that used an adjusted F-Scoring technique over a labelled subset of the documents.
Twitter中疫苗反应识别的主题建模
背景:疫苗安全信号的检测依赖于各种已建立的报告系统,在疫苗不良反应和报告以及随后的报告处理之间不可避免地存在滞后。因此,最好尽早检测安全信号,最好接近实时。社交媒体的广泛使用为分享和寻求与健康有关的信息提供了一个平台,社交媒体对话的即时性意味着它们是早期发现疫苗安全信号的理想候选者。本研究的目的是评估主题模型,以识别Twitter上最有可能包含疫苗安全信号的用户帖子。这是确定是否可以在社交媒体流中检测到可靠的疫苗安全信号的整体研究的第一步。所使用的技术侧重于确定最能揭示包含疫苗安全信号的文件的模型设计和主题数量,以协助降维和随后对文本数据进行标记。该研究比较了Gensim LDA、MALLET和jLDADMM DMM模型,以确定检测疫苗安全信号的最有效模型,辅助评估过程是在标记的文件子集上使用调整的f评分技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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