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A data-driven classification framework for conflict and instability analysis

机译:一个用于冲突和不稳定分析的数据驱动分类框架

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Is it possible to identify and even forecast well in advance (6–12 months) the relative stability of a state to enable policy makers to successfully intervene? How does one acquire that understanding? One technique is to model and understand the social factors, which summarize the background conditions, attributes and performance factors of the country over time. The purpose of this paper is to: (1) present a generalized data-driven framework for conflict analysis and forecasting, (2) show that state-of-the-art pattern classification techniques provide significant improvements to forecasting accuracy, and (3) introduce classification problems arising in social sciences to the engineering community for further enhancement of analysis techniques. We evaluate the efficacy of our data-driven framework on macro-structural factors as relevant contributors to country instability, delineating the independent and dependent variables. The results demonstrate significant improvement over previous approaches in classification metrics of accuracy, precision, and recall.
机译:是否有可能提前(6至12个月)识别甚至预测国家的相对稳定性,以使决策者能够成功进行干预?一个人如何获得这种理解?一种技术是对社会因素进行建模和理解,概括了随时间变化的国家的背景条件,属性和绩效因素。本文的目的是:(1)提出一种用于冲突分析和预测的通用数据驱动框架;(2)表明最新的模式分类技术可显着提高预测准确性;以及(3)向工程界介绍社会科学中出现的分类问题,以进一步增强分析技术。我们评估了宏观结构因素的数据驱动框架作为国家不稳定的相关因素的有效性,描述了自变量和因变量。结果表明,在准确性,精确度和召回率的分类指标方面,与以前的方法相比有了显着改进。

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