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Computational modeling of stigmatized behaviour in pro-vaccination and anti-vaccination discussions on social media

机译:促疫苗接种和反疫苗接种讨论中耻辱行为的计算模型

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Much research has been done within the social sciences on the interpretation and influence of stigma on human behaviour and health, which result in out-of-group exclusion, distancing, cognitive separation, status loss, discrimination, in-group pressure, and often lead to disengagement, non-adherence to treatment plan, and prescriptions by the doctor. However, little work has been conducted on computational identification of stigma in general and in social media discourse in particular. In this paper, we develop the annotation scheme for stigma based on social science theories, and perform a corpus study on the data from Facebook groups on vaccination. The data from pro-vaccination and anti-vaccination discussion groups are annotated by trained annotators and by MTurk annotators. We analyze the annotations using LIWC (Linguistic Inquiry and Word Count) software and TF-IDF in order to identify differentiating features between stigmatizing vs. non-stigmatizing content. Our corpus study lays a valuable foundation in computational modeling of social stigma, as it can serve as validation/interpretation of the social science theories through the prism of laypeople understanding. The annotated corpora can be subsequently used for automatic stigma identification. Moreover, the annotation scheme can be applied to study stigma across different themes and diseases and can be utilized during public health informational campaigns and health interventions.
机译:社会科学在社会科学中进行了许多研究,对人类行为和健康的解释和影响,这导致群体不排除,远端,认知分离,地位损失,歧视,集团压力,以及经常引导脱离,不遵守治疗计划,医生处方。然而,特别是在诸如社交媒体话语中的耻辱的计算鉴定时进行了很少的作品。在本文中,我们基于社会科学理论为耻辱的注释计划,并对疫苗接种的Facebook群体进行数据进行侦察研究。来自Pro接种疫苗接种和反疫苗接种讨论组的数据由培训的注释器和MTURK注释器注释。我们使用LIWC(语言查询和字数)软件和TF-IDF分析注释,以识别耻辱与非耻辱内容之间的区分功能。我们的语料库研究在社会耻辱的计算建模中奠定了一个有价值的基础,因为它可以作为通过棱镜的棱镜对社会科学理论的验证/解释。注释的Corpora可以随后用于自动耻辱识别。此外,注释方案可以应用于在不同主题和疾病上研究耻辱,并且可以在公共卫生信息运动和健康干预期间使用。

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