利用当地维和数据预测暴力的变化

IF 1.5 3区 社会学 Q2 INTERNATIONAL RELATIONS International Interactions Pub Date : 2022-04-07 DOI:10.1080/03050629.2022.2055010
L. Hultman, M. Leis, Desirée Nilsson
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引用次数: 3

摘要

改进预测的一种方法是通过更好的数据。我们将探讨通过引入反映第三方管理暴力努力的数据,可以在多大程度上改进对冲突暴力的预测。通过利用地理编码维和(Geo-PKO)数据集关于1994-2020年联合国在非洲所有维和部署的新国家以下数据,我们预测了地方一级的暴力变化。维和部署数据的优势在于,与通常使用的许多结构性变量不同,这些数据随时间和空间而变化。我们提出了两个维和模型,其中包含几个当地维和特征,每个模型都有一组单独的附加变量,构成各自的基准。我们预测的平均误差只是略有改善。然而,通过比较观察到的和预测到的暴力变化,维和特征提高了我们识别正确变化迹象的能力。当我们将样本限制在部署了维和行动的国家时,这些结果尤其明显。因此,对于像ViEWS这样雄心勃勃的预测项目,纳入关于维和部队的细粒度和经常更新的数据可能非常重要。
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Employing local peacekeeping data to forecast changes in violence
Abstract One way of improving forecasts is through better data. We explore how much we can improve predictions of conflict violence by introducing data reflecting third-party efforts to manage violence. By leveraging new sub-national data on all UN peacekeeping deployments in Africa, 1994–2020, from the Geocoded Peacekeeping (Geo-PKO) dataset, we predict changes in violence at the local level. The advantage of data on peacekeeping deployments is that these vary over time and space, as opposed to many structural variables commonly used. We present two peacekeeping models that contain several local peacekeeping features, each with a separate set of additional variables that form the respective benchmark. The mean errors of our predictions only improve marginally. However, comparing observed and predicted changes in violence, the peacekeeping features improve our ability to identify the correct sign of the change. These results are particularly strong when we limit the sample to countries that have seen peacekeeping deployments. For an ambitious forecasting project, like ViEWS, it may thus be highly relevant to incorporate fine-grained and frequently updated data on peacekeeping troops.
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来源期刊
International Interactions
International Interactions INTERNATIONAL RELATIONS-
CiteScore
2.40
自引率
7.70%
发文量
38
期刊介绍: International Interactions is a leading interdisciplinary journal that publishes original empirical, analytic, and theoretical studies of conflict and political economy. The journal has a particular interest in research that focuses upon the broad range of relations and interactions among the actors in the global system. Relevant topics include ethnic and religious conflict, interstate and intrastate conflict, conflict resolution, conflict management, economic development, regional integration, trade relations, institutions, globalization, terrorism, and geopolitical analyses.
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