Data Mining for Integration and Verification of Socio-Geographical Trend Statements in the Context of Conflict Risk

V. Kamp, Jean Pierre Knust, R. Moratz, Kevin Stehn, Soeren Stoehrmann
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Abstract

Data mining enables an innovative, largely automatic meta-analysis of the relationship between political and economic geography analyses of crisis regions. As an example, the two approaches Global Conflict Risk Index (GCRI) and Fragile States Index (FSI) can be related to each other. The GCRI is a quantitative conflict risk assessment based on open source data and a statistical regression method developed by the Joint Research Centre of the European Commission. The FSI is based on a conflict assessment framework developed by The Fund for Peace in Washington, DC. In contrast to the quantitative GCRI, the FSI is essentially focused on qualitative data from systematic interviews with experts. Both approaches therefore have closely related objectives, but very different methodologies and data sources. It is therefore hoped that the two complementary approaches can be combined to form an even more meaningful meta-analysis, or that contradictions can be discovered, or that a validation of the approaches can be obtained if there are similarities. We propose an approach to automatic meta-analysis that makes use of machine learning (data mining). Such a procedure represents a novel approach in the meta-analysis of conflict risk analyses.
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冲突风险背景下整合和验证社会地理趋势声明的数据挖掘
数据挖掘能够对危机地区的政治和经济地理分析之间的关系进行创新的、很大程度上自动的元分析。例如,全球冲突风险指数(GCRI)和脆弱国家指数(FSI)这两种方法可以相互关联。GCRI是一种基于开源数据和统计回归方法的定量冲突风险评估,由欧盟委员会联合研究中心开发。FSI是基于华盛顿特区和平基金制定的冲突评估框架。与定量的GCRI相比,FSI基本上侧重于与专家进行系统访谈的定性数据。因此,这两种方法的目标密切相关,但方法和数据来源却截然不同。因此,我们希望将这两种互补的方法结合起来,形成一个更有意义的元分析,或者发现矛盾,或者如果有相似之处,可以对方法进行验证。我们提出了一种利用机器学习(数据挖掘)的自动元分析方法。该程序代表了冲突风险分析元分析中的一种新方法。
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