Predicting Online Islamophobic Behavior after #ParisAttacks

J. Web Sci. Pub Date : 2017-10-16 DOI:10.1561/106.00000013
Kareem Darwish, Walid Magdy, Afshin Rahimi, Timothy Baldwin, Norah Abokhodair
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引用次数: 28

Abstract

The Paris terrorist attacks occurred on November 13, 2015, prompting a massive response on social media including Twitter, with millions of posted tweets in the first few hours after the attacks. Most of the tweets were condemning the attacks and showing support to Parisians. One of the trending debates related to the attacks concerned possible association between terrorism and Islam, and Muslims in general. This created a global discussion between those attacking and those defending Islam and Muslims. In this paper, we use this incident to examine the effect of online social network interactions prior to an event to predict what attitudes will be expressed in response to the event. Specifically, we focus on how a person's online content and network dynamics can be used to predict future attitudes and stance in the aftermath of a major event. In our study, we collected a set of 8.36 million tweets related to the Paris attacks within the 50 hours following the event, of which we identified over 900k tweets mentioning Islam and Muslims. We quantitatively analyzed users' network interactions and historical tweets to predict their attitudes towards Islam and Muslim. We provide a description of the quantitative results based on the content (hashtags) and network interactions (retweets, replies, and mentions). We analyze two types of data: (1) we use post-event tweets to learn users' stated stance towards Muslims based on sampling methods and crowd-sourced annotations; and (2) we employ pre-event interactions on Twitter to build a classifier to predict post-event stance. We found that pre-event network interactions can predict attitudes towards Muslims with 82\% macro F-measure, even in the absence of prior mentions of Islam, Muslims, or related terms.
预测巴黎袭击后网上的伊斯兰恐惧症行为
巴黎恐怖袭击发生在2015年11月13日,在包括推特在内的社交媒体上引发了巨大反响,在袭击发生后的最初几个小时内,就有数百万人发布了推文。大多数推文都谴责了袭击事件,并对巴黎人表示支持。与袭击有关的热门辩论之一是恐怖主义与伊斯兰教以及穆斯林之间可能存在的联系。这在攻击伊斯兰教和穆斯林的人和捍卫伊斯兰教和穆斯林的人之间引发了一场全球性的讨论。在本文中,我们利用这一事件来检验在事件发生之前在线社交网络互动的影响,以预测人们对事件的反应会表达什么样的态度。具体来说,我们关注的是如何利用一个人的在线内容和网络动态来预测重大事件之后的未来态度和立场。在我们的研究中,我们在事件发生后的50小时内收集了一组836万条与巴黎袭击有关的推文,其中我们确定了超过90万条提到伊斯兰教和穆斯林的推文。我们定量分析了用户的网络互动和历史推文,以预测他们对伊斯兰教和穆斯林的态度。我们提供了基于内容(标签)和网络交互(转发、回复和提及)的定量结果描述。我们分析了两种类型的数据:(1)我们使用事件后推文来学习用户对穆斯林的立场,基于抽样方法和众包注释;(2)我们利用Twitter上的事件前交互来构建分类器来预测事件后的立场。我们发现,即使事先没有提到伊斯兰教、穆斯林或相关术语,事前网络互动也能以82%的宏观f值预测对穆斯林的态度。
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