利用抗议数据预测武装冲突

IF 3.4 1区 社会学 Q1 INTERNATIONAL RELATIONS
Espen Geelmuyden Rød, Håvard Hegre, Maxine Leis
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引用次数: 2

摘要

抗议是一种低强度的政治冲突形式,可能引发国内武装冲突。因此,在提供武装冲突早期预警的系统中,有关抗议活动的数据应提供信息。然而,由于大多数抗议活动不会升级为武装冲突,我们首先需要理论来为我们的预测模型提供信息。我们确定了与抗议镇压动态、政治制度和经济发展有关的三种理论解释,作为我们模型的基础。在理论基础上,我们运用了九个模型,并利用政治暴力预警系统(ViEWS)对非洲国内武装冲突进行次国家预测。结果表明,与考虑冲突历史的基线模型相比,抗议数据大大改善了冲突发生率和发病预测。此外,结果强调了理论在冲突预测中的中心地位:我们的理论知情的抗议模型优于平等对待所有抗议的幼稚模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting armed conflict using protest data
Protest is a low-intensity form of political conflict that can precipitate intrastate armed conflict. Data on protests should therefore be informative in systems that provide early warnings of armed conflict. However, since most protests do not escalate to armed conflict, we first need theory to inform our prediction models. We identify three theoretical explanations relating to protest-repression dynamics, political institutions and economic development as the basis for our models. Based on theory, we operationalize nine models and leverage the political Violence Early Warning System (ViEWS) to generate subnational forecasts for intrastate armed conflict in Africa. Results show that protest data substantially improves conflict incidence and onset predictions compared to baseline models that account for conflict history. Moreover, the results underline the centrality of theory for conflict forecasting: our theoretically informed protest models outperform naive models that treat all protests equally.
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来源期刊
CiteScore
6.70
自引率
5.60%
发文量
80
期刊介绍: Journal of Peace Research is an interdisciplinary and international peer reviewed bimonthly journal of scholarly work in peace research. Edited at the International Peace Research Institute, Oslo (PRIO), by an international editorial committee, Journal of Peace Research strives for a global focus on conflict and peacemaking. From its establishment in 1964, authors from over 50 countries have published in JPR. The Journal encourages a wide conception of peace, but focuses on the causes of violence and conflict resolution. Without sacrificing the requirements for theoretical rigour and methodological sophistication, articles directed towards ways and means of peace are favoured.
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