经验(未复制):使用ARFIMA和ICEWS数据预测阿富汗行政单位每月的政治暴力程度

IF 1.8 Q3 PUBLIC ADMINISTRATION Data & policy Pub Date : 2022-10-04 DOI:10.1017/dap.2022.26
Tamir Libel
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引用次数: 0

摘要

摘要本文的目的是评估自回归分数积分移动平均(ARFIMA)模型在使用综合危机预警系统(ICEWS)预测时空局部政治暴力事件中的应用。参考两个常见的相关假设,将ARFIMA模型的性能与naïve模型的性能进行比较:ARFIMA模型将优于naïve模型,并且优于率会随着空间聚集水平的提高而恶化。这种分析策略被用来预测阿富汗的政治暴力事件。分析由三个部分组成。第一项研究复制了Yonamine的研究,研究时间从2010年4月开始,到2012年3月结束。第二部分将结果与Yonamine进行比较。该比较用于评估原始研究中得出的结论的有效性,该研究基于全球事件、语言和语调数据库,用于对ICEWS数据实施该方法。基于这一比较的结论,第三部分使用Yonamine的方法来预测阿富汗在更长的一段时间内(1995年1月至2021年8月)发生的暴力事件。这些结论提供了短期局部预报效用的评估。
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Lesson (un)replicated: Predicting levels of political violence in Afghan administrative units per month using ARFIMA and ICEWS data
Abstract The aim of the present article is to evaluate the use of the Autoregressive Fractionally Integrated Moving Average (ARFIMA) model in predicting spatially and temporally localized political violent events using the Integrated Crisis Early Warning System (ICEWS). The performance of the ARFIMA model is compared to that of a naïve model in reference to two common relevant hypotheses: the ARFIMA model would outperform a naïve model and the rate of outperformance would deteriorate the higher the level of spatial aggregation. This analytical strategy is used to predict political violent events in Afghanistan. The analysis consists of three parts. The first is a replication of Yonamine’s study for the period beginning in April 2010 and ending in March 2012. The second part compares the results to those of Yonamine. The comparison was used to assess the validity of the conclusions drawn in the original study, which was based on the Global Database of Events, Language, and Tone, for the implementation of this approach to ICEWS data. Building on the conclusions of this comparison, the third part uses Yonamine’s approach to predict violent events in Afghanistan over a significantly longer period of time (January 1995–August 2021). The conclusions provide an assessment of the utility of short-term localized forecasting.
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3.10
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审稿时长
12 weeks
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