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Flash mobs, Arab Spring and protest movements: Can we analyse group identities in online conversations?

机译:暴民,阿拉伯之春和抗议运动:我们可以分析在线对话中的群体身份吗?

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The Internet has provided people with new ways of expressing not only their individuality but also their collectivity i.e., their group affiliations. These group identities are the shared sense of belonging to a group. Online contact with others who share the same group identity can lead to cooperation and, even, coordination of social action initiatives both online and offline. Such social actions may be for the purposes of positive change, e.g., the Arab Spring in 2010, or disruptive, e.g., the England Riots in 2011. Stylometry and authorship attribution research has shown that it is possible to distinguish individuals based on their online language. In contrast, this work proposes and evaluates a model to analyse group identities online based on textual conversations amongst groups. We argue that textual features make it possible to automatically distinguish between different group identities and detect whether group identities are salient (i.e., most prominent) in the context of a particular conversation. We show that the salience of group identities can be detected with 95% accuracy and group identities can be distinguished from others with 84% accuracy. We also identify the most relevant features that may enable mal-actors to manipulate the actions of online groups. This has major implications for tools and techniques to drive positive social actions online or safeguard society from disruptive initiatives. At the same time, it poses privacy challenges given the potential ability to persuade or dissuade large groups online to move from rhetoric to action. (C) 2016 Elsevier Ltd. All rights reserved.
机译:互联网为人们提供了新的表达方式,不仅表达了他们的个性,而且表达了他们的集体性,即他们的团体隶属关系。这些群体身份是属于一个群体的共有感。与拥有相同群体身份的其他人进行在线联系可以导致在线甚至离线合作,甚至协调社会行动计划。此类社会行为可能是出于积极变化的目的,例如2010年的“阿拉伯之春”,或破坏性的,例如2011年的“英格兰骚乱”。笔势和作者身份研究表明,有可能根据在线语言来区分个人。相比之下,这项工作提出并评估了一种模型,该模型可基于小组之间的文本对话在线分析小组身份。我们认为,文字特征可以自动区分不同的群体身份,并检测在特定对话中群体身份是否显着(即最突出)。我们表明,可以以95%的准确度检测出群体身份的显着性,并且可以以84%的准确性将群体身份与其他个体区分开。我们还将找出最相关的功能,使恶意行为者能够操纵在线群体的行为。这对推动在线积极社会行动或保护社会免受破坏性举措的工具和技术具有重大影响。同时,鉴于有可能说服或劝阻大型团体从言辞转向行动,这给隐私构成了挑战。 (C)2016 Elsevier Ltd.保留所有权利。

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