2023/24年VIEWS预测挑战:在不确定的情况下预测武装冲突中的死亡人数

IF 3.4 1区 社会学 Q1 INTERNATIONAL RELATIONS
Håvard Hegre, Paola Vesco, Michael Colaresi, Jonas Vestby, Alexa Timlick, Noorain Syed Kazmi, Angelica Lindqvist-McGowan, Friederike Becker, Marco Binetti, Tobias Bodentien, Tobias Bohne, Patrick T. Brandt, Thomas Chadefaux, Simon Drauz, Christoph Dworschak, Vito D’Orazio, Hannah Frank, Cornelius Fritz, Kristian Skrede Gleditsch, Sonja Häffner, Martin Hofer, Finn L Klebe, Luca Macis, Alexandra Malaga, Marius Mehrl, Nils W Metternich, Daniel Mittermaier, David Muchlinski, Hannes Mueller, Christian Oswald, Paola Pisano, David Randahl, Christopher Rauh, Lotta Rüter, Thomas Schincariol, Benjamin Seimon, Elena Siletti, Marco Tagliapietra, Chandler Thornhill, Johan Vegelius, Julian Walterskirchen
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引用次数: 0

摘要

政府和非政府组织越来越依赖冲突预警系统来支持其决策。事实证明,作为概率分布的战争强度预测比点估计更接近决策者的需要,因为它们既包含了最可能的结果,也包含了冲突灾难性升级的低概率风险的有用表示。相比之下,点估计预测不能代表冲突死亡人数分布中固有的不确定性。然而,目前的预警系统主要集中于提供点估计,而预测冲突死亡人数的概率分布的努力仍然很少。在之前的VIEWS竞赛的基础上,我们组织了一个预测挑战,以鼓励在这方面的努力。我们邀请从冲突研究到计算机科学等多个学科领域的研究人员预测基于国家的武装冲突中的死亡人数,以UCDP“最佳”估计的形式汇总为两个分析单位(国家月和pri - grid月),并对不确定性进行估计。本文介绍了预测挑战背后的目标和动机,提出了一套评估指标来评估预测模型的性能,描述了评估贡献的基准模型,并总结了提交的贡献的显著特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The 2023/24 VIEWS Prediction challenge: Predicting the number of fatalities in armed conflict, with uncertainty
Governmental and nongovernmental organizations have increasingly relied on early-warning systems of conflict to support their decisionmaking. Predictions of war intensity as probability distributions prove closer to what policymakers need than point estimates, as they encompass useful representations of both the most likely outcome and the lower-probability risk that conflicts escalate catastrophically. Point-estimate predictions, by contrast, fail to represent the inherent uncertainty in the distribution of conflict fatalities. Yet, current early warning systems are preponderantly focused on providing point estimates, while efforts to forecast conflict fatalities as a probability distribution remain sparse. Building on the predecessor VIEWS competition, we organize a prediction challenge to encourage endeavours in this direction. We invite researchers across multiple disciplinary fields, from conflict studies to computer science, to forecast the number of fatalities in state-based armed conflicts, in the form of the UCDP ‘best’ estimates aggregated to two units of analysis (country-months and PRIO-GRID-months), with estimates of uncertainty. This article introduces the goal and motivation behind the prediction challenge, presents a set of evaluation metrics to assess the performance of the forecasting models, describes the benchmark models which the contributions are evaluated against, and summarizes the salient features of the submitted contributions.
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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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