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评估极右翼极端分子的暴力风险:自然语言处理的新作用。

Assessing Violence Risk among Far-Right Extremists: A New Role for Natural Language Processing.

作者信息

Ebner Julia, Kavanagh Christopher, Whitehouse Harvey

机构信息

Department of Anthropology and Museum Ethnography, University of Oxford, Oxford, UK.

出版信息

Terror Political Violence. 2023 Jul 25;36(7):944-961. doi: 10.1080/09546553.2023.2236222. eCollection 2024.

Abstract

A growing body of research suggests that an individual's willingness to fight and die for groups is rooted in the fusion of personal and group identities, especially when the group is threatened, violence is condoned, and the group's enemies are dehumanised or demonised. Here we consider whether the language used by extremists can help with early detection of these risk factors associated with violent extremism. We applied a new fusion-based linguistic violence risk assessment framework to a range of far-right extremist online groups from across the violence spectrum. We conducted an R-based NLP analysis to produce a Violence Risk Index, integrating statistically significant linguistic markers of terrorist manifestos as opposed to non-violent communiqués into one weighted risk assessment score for each group. The language-based violence risk scores for the far-right extremist groups were then compared to those of non-extremist control groups. We complemented our quantitative NLP analysis with qualitative insights that contextualise the violence markers detected in each group. Our results show that the fusion markers combined with several other variables identified across the different online datasets are indeed indicative of the real-world violence level associated with the relevant groups, pointing to new ways of detecting and preventing violent terrorism.

摘要

越来越多的研究表明,个人为群体战斗和牺牲的意愿源于个人身份与群体身份的融合,特别是当群体受到威胁、暴力被容忍,且群体的敌人被非人化或妖魔化时。在此,我们探讨极端分子使用的语言是否有助于早期发现与暴力极端主义相关的这些风险因素。我们将一种新的基于融合的语言暴力风险评估框架应用于一系列来自不同暴力程度范围的极右翼极端主义在线群体。我们进行了基于R的自然语言处理分析,以生成暴力风险指数,将恐怖主义宣言中具有统计学意义的语言标记(与非暴力公报相对)整合到每个群体的一个加权风险评估分数中。然后将极右翼极端主义群体基于语言的暴力风险分数与非极端主义对照组的分数进行比较。我们用定性见解对定量自然语言处理分析进行补充,这些见解将在每个群体中检测到的暴力标记置于具体情境中。我们的结果表明,融合标记与在不同在线数据集中识别出的其他几个变量相结合,确实表明了与相关群体相关的现实世界暴力水平,为检测和预防暴力恐怖主义指明了新途径。

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