Unraveling Spatial, Structural, and Social Country-Level Conditions for the Emergence of the Foreign Fighter Phenomenon: An Exploratory Data Mining Approach to the Case Of ISIS

IF 0.5 4区 社会学 Q3 SOCIAL SCIENCES, INTERDISCIPLINARY
Agustín Pájaro, Ignacio J. Duran, Pablo Rodrigo
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引用次数: 0

Abstract

ABSTRACT Governments face a tough and timeless challenge: dealing with the capability of radical terrorist organizations to recruit foreign fighters. However, scholars so far have ignored that this phenomenon pertains to the realm of complexity theory, failing to determine the combination of country-level variables able to catalyze this issue. This is an important concern if countries want to design effective socio-political strategies aimed at decreasing terrorist groups’ capability to enroll foreign fighters or, at least, to curtail the penetration of their radical message. Thus, to address this issue we undertake an exploratory data mining approach (knowledge discovery in databases) to discover country-level patterns which might engender conditions that induce people to join an extremist organization, based on the case of ISIS. After a pre-selection procedure, the 950 variables initially selected were reduced to 22, and subsequently used in decision tree algorithms. Findings reveal the existence of six specific country clusters, which are characterized by some spatial, structural (economic and political), and social variables that create favorable conditions for the emergence of the phenomenon. Academic and practical recommendations are then discussed.
揭示外国战士现象出现的空间、结构和社会国家层面条件:ISIS案例的探索性数据挖掘方法
各国政府面临着一个严峻而永恒的挑战:应对激进恐怖组织招募外国战斗人员的能力。然而,迄今为止,学者们忽略了这一现象属于复杂性理论领域,未能确定能够催化这一问题的国家级变量组合。如果各国希望设计有效的社会政治战略,以减少恐怖主义集团招募外国战斗人员的能力,或至少减少其激进信息的渗透,这是一个重要的问题。因此,为了解决这个问题,我们采用了一种探索性的数据挖掘方法(数据库中的知识发现),以发现国家层面的模式,这些模式可能会导致人们加入极端组织,以ISIS为例。经过预选程序,最初选择的950个变量减少到22个,随后用于决策树算法。研究结果揭示了六个特定国家集群的存在,它们具有一些空间、结构(经济和政治)和社会变量的特征,这些变量为这种现象的出现创造了有利条件。然后讨论了学术和实践建议。
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来源期刊
Dados-Revista De Ciencias Sociais
Dados-Revista De Ciencias Sociais SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
1.00
自引率
0.00%
发文量
23
审稿时长
10 weeks
期刊介绍: Dados - Revista de Ciências Sociais is a quarterly publication of the Instituto Universitário de Pesquisas do Rio de Janeiro (IUPERJ) aiming at publishing original articles in the area of social sciences. IUPERJ is the social sciences research organ of the Universidade Candido Mendes - UCAM. Opinions and concepdados expressed in signed articles are exclusive responsibility of the authors. Published from 1966, the journal"s abbreviated title is Dados, the form that should be used in bibliographies, footnotes, and bibliographical references and strips.
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