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#SupportTheCause: Identifying Motivations to Participate in Online Health Campaigns

机译:#SupportTheCause:确定参加在线健康运动的动机

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We consider the task of automatically identifying participants' motivations in the public health campaign Movember and investigate the impact of the different motivations on the amount of campaign donations raised. Our classification scheme is based on the Social Identity Model of Collective Action (van Zomeren et al., 2008). We find that automatic classification based on Movember profiles is fairly accurate, while automatic classification based on tweets is challenging. Using our classifier, we find a strong relation between types of motivations and donations. Our study is a first step towards scaling-up collective action research methods.
机译:我们考虑自动识别公共卫生竞选活动中的参与者动机的任务,并调查不同动机对筹集的竞选捐款金额的影响。我们的分类方案基于集体行动的社会形式模型(Van Zomeren等,2008)。我们发现,基于MOVEMEMENT配置文件的自动分类相当准确,而基于推文的自动分类是具有挑战性的。使用我们的分类器,我们在动机和捐赠类型之间找到了强有力的关系。我们的研究是迈向缩放集体行动研究方法的第一步。

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