Narrative Detection and Feature Analysis in Online Health Communities

Achyutarama Ganti, Steven R. Wilson, Zexin Ma, Xinyan Zhao, Rong Ma
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引用次数: 1

Abstract

Narratives have been shown to be an effective way to communicate health risks and promote health behavior change, and given the growing amount of health information being shared on social media, it is crucial to study health-related narratives in social media. However, expert identification of a large number of narrative texts is a time consuming process, and larger scale studies on the use of narratives may be enabled through automatic text classification approaches. Prior work has demonstrated that automatic narrative detection is possible, but modern deep learning approaches have not been used for this task in the domain of online health communities. Therefore, in this paper, we explore the use of deep learning methods to automatically classify the presence of narratives in social media posts, finding that they outperform previously proposed approaches. We also find that in many cases, these models generalize well across posts from different health organizations. Finally, in order to better understand the increase in performance achieved by deep learning models, we use feature analysis techniques to explore the features that most contribute to narrative detection for posts in online health communities.
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在线健康社区的叙事检测与特征分析
叙述已被证明是传达健康风险和促进健康行为改变的有效方式,鉴于在社交媒体上分享的健康信息越来越多,研究社交媒体上与健康有关的叙述至关重要。然而,专家对大量叙事文本的识别是一个耗时的过程,通过自动文本分类方法可以实现对叙事使用的更大规模研究。先前的工作已经证明,自动叙事检测是可能的,但现代深度学习方法尚未用于在线健康社区领域的这项任务。因此,在本文中,我们探索使用深度学习方法来自动分类社交媒体帖子中叙述的存在,发现它们优于先前提出的方法。我们还发现,在许多情况下,这些模型可以很好地概括来自不同卫生组织的岗位。最后,为了更好地理解深度学习模型所实现的性能提升,我们使用特征分析技术来探索对在线健康社区帖子的叙事检测最有贡献的特征。
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