The United States have some of the highest rates of gun violence among developed countries. Yet, there is a disagreement about the extent to which firearms should be regulated. In this study, we employ social media signals to examine the predictors of offline political activism, at both population and individual level. We show that it is possible to classify the stance of users on the gun issue, especially accurately when network information is available. Alongside socioeconomic variables, network information such as the relative size of the two sides of the debate is also predictive of state-level gun policy. On individual level, we build a statistical model using network, content, and psycho-linguistic features that predicts real-life political action, and explore the most predictive linguistic features. Thus, we argue that, alongside demographics and socioeconomic indicators, social media provides useful signals in the holistic modeling of political engagement around the gun debate.
翻译:美国是发达国家中枪支暴力率最高的国家之一。然而,对于枪支应受到监管的程度存在分歧。在本研究中,我们使用社交媒体信号来检查离线政治行动在人口和个人层面的预测因素。我们表明,可以对枪支问题用户的立场进行分类,特别是当有网络信息的时候。除了社会经济变量外,诸如辩论双方相对规模的网络信息也预测了州一级的枪支政策。 在个人层面,我们利用网络、内容和心理语言特征构建了一个统计模型,预测现实生活中的政治行动,并探索最可预测的语言特征。 因此,我们认为,除了人口和社会经济指标之外,社会媒体在围绕枪支辩论的政治参与的整体模式中提供了有用的信号。