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A scalable machine learning approach for measuring violent and peaceful forms of political protest participation with social media data

机译:一种可扩展的机器学习方法用于通过社交媒体数据衡量暴力和和平形式的政治抗议参与

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摘要

In this paper, we introduce a scalable machine learning approach accompanied by open-source software for identifying violent and peaceful forms of political protest participation using social media data. While violent political protests are statistically rare events, they often shape public perceptions of political and social movements. This is, in part, due to the extensive and disproportionate media coverage which violent protest participation receives relative to peaceful protest participation. In the past, when a small number of media conglomerates served as the primary information source for learning about political and social movements, viewership and advertiser demands encouraged news organizations to focus on violent forms of political protest participation. Consequently, much of our knowledge about political protest participation is derived from data collected about violent protests, while less is known about peaceful forms of protest. Since the early 2000s, the digital revolution shifted attention away from traditional news sources toward social media as a primary source of information about current events. This, along with developments in machine learning which allow us to collect and analyze data relevant to political participation, present us with unique opportunities to expand our knowledge of peaceful and violent forms of political protest participation through social media data.
机译:在本文中,我们介绍了一种可扩展的机器学习方法以及开源软件,该软件可使用社交媒体数据识别暴力和和平形式的政治抗议参与。尽管从统计上讲暴力政治抗议是罕见的事件,但它们通常会影响公众对政治和社会运动的看法。部分原因是由于暴力抗议参与相对于和平抗议参与所获得的媒体报道广泛且不成比例。过去,当少数媒体集团作为了解政治和社会运动的主要信息来源时,收视率和广告商的需求促使新闻组织将注意力集中在暴力形式的政治抗议活动上。因此,我们对参与政治抗议活动的大部分知识是从收集的有关暴力抗议活动的数据中获得的,而对和平抗议活动的了解却很少。自2000年代初以来,数字革命将人们的注意力从传统新闻源转移到了社交媒体,作为有关时事的主要信息来源。这与机器学习的发展相结合,使我们能够收集和分析与政治参与有关的数据,从而为我们提供了独特的机会,可以通过社交媒体数据来扩展我们对和平和暴力形式的政治抗议参与的认识。

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