Terrorist Attacks, Cultural Incidents, and the Vote for Radical Parties: Analyzing Text from Twitter

IF 5 1区 社会学 Q1 POLITICAL SCIENCE
Francesco Giavazzi, Felix Iglhaut, Giacomo Lemoli, Gaia Rubera
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引用次数: 0

Abstract

We study the role of perceived threats from other cultures induced by terrorist attacks and criminal events on public discourse and support for radical-right parties. We develop a rule which allocates Twitter users to electoral districts in Germany and use a machine-learning method to compute measures of textual similarity between the tweets they produce and tweets by accounts of the main German parties. Using the exogenous timing of attacks, we find that, after an event, Twitter language becomes on average more similar to that of the main radical-right party, AfD. The result is driven by a larger share of tweets discussing immigrants and Muslims, common AfD topics, and by a more negative sentiment of these tweets. Shifts in language similarity are correlated with changes in vote shares between federal elections. These results point to the role of perceived threats from minorities on the success of nationalist parties.

恐怖袭击、文化事件和激进党投票:分析推特文本
我们研究了由恐怖袭击和犯罪事件引发的对其他文化威胁的感知对公众言论和激进右翼政党支持率的影响。我们制定了一种规则,将推特用户分配到德国的选区,并使用机器学习方法计算他们发布的推文与德国主要政党账户发布的推文之间的文本相似度。利用攻击事件的外生时间,我们发现在事件发生后,推特语言与主要激进右翼政党 AfD 的语言平均变得更加相似。造成这一结果的原因是,讨论移民和穆斯林(AfD 的共同话题)的推文所占比例更大,而且这些推文的负面情绪更浓。语言相似性的变化与两次联邦选举之间得票率的变化相关。这些结果表明,少数民族的威胁感对民族主义政党的成功起着重要作用。
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来源期刊
CiteScore
9.30
自引率
2.40%
发文量
61
期刊介绍: The American Journal of Political Science (AJPS) publishes research in all major areas of political science including American politics, public policy, international relations, comparative politics, political methodology, and political theory. Founded in 1956, the AJPS publishes articles that make outstanding contributions to scholarly knowledge about notable theoretical concerns, puzzles or controversies in any subfield of political science.
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