Predicting Conflict Events in Africa at Subnational Level

Stijn van Weezel
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引用次数: 3

Abstract

This study reviews the contribution in predictive accuracy of a number of geographic and socio-economic factors that are commonly linked to conflict incidence. A logit model is fitted to sub-national data for Africa at grid-cell level covering the years 2000-2009, generating an out-of-sample forecast for the period 2010-2015. Results show that the strongest predictor of future conflict is current conflict incidence in the grid-cell and neighbouring cells. Additionally, the infant mortality rate, which serves as a proxy for socio-economic well-being, shows some prowess in contributing to accurate predictions. This in contrast with factors such as the share of mountainous terrain. Travel time to the nearest city, to proxy for urban-rural differences, is also a strong predictor, but it must be noted that this could be the result of reporting bias in the outcome variable. In general the results highlight that it is difficult to improve accuracy beyond the contribution of conflict dynamics. Finally, the presented results are based on a relatively simple regression model commonly used in the literature and more sophisticated statistical techniques such as machine learning could improve predictions.
非洲次国家层面的冲突事件预测
本研究回顾了一些通常与冲突发生率有关的地理和社会经济因素对预测准确性的贡献。一个logit模型拟合了非洲2000-2009年电网层面的次国家数据,生成了2010-2015年的样本外预测。结果表明,未来冲突的最强预测因子是当前网格单元和相邻单元的冲突发生率。此外,作为社会经济福利指标的婴儿死亡率在作出准确预测方面显示出一定的能力。这与山区地形的比例等因素形成对比。到最近的城市的旅行时间,代表城乡差异,也是一个强有力的预测因素,但必须注意,这可能是结果变量报告偏差的结果。总的来说,结果强调,很难提高准确度超出冲突动态的贡献。最后,给出的结果是基于文献中常用的相对简单的回归模型,而更复杂的统计技术(如机器学习)可以改进预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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