Supporting peace negotiations in the Yemen war through machine learning

IF 1.8 Q3 PUBLIC ADMINISTRATION Data & policy Pub Date : 2022-07-23 DOI:10.1017/dap.2022.19
M. Arana-Catania, F. V. Lier, R. Procter
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引用次数: 2

Abstract

Abstract Today’s conflicts are becoming increasingly complex, fluid, and fragmented, often involving a host of national and international actors with multiple and often divergent interests. This development poses significant challenges for conflict mediation, as mediators struggle to make sense of conflict dynamics, such as the range of conflict parties and the evolution of their political positions, the distinction between relevant and less relevant actors in peace-making, or the identification of key conflict issues and their interdependence. International peace efforts appear ill-equipped to successfully address these challenges. While technology is already being experimented with and used in a range of conflict related fields, such as conflict predicting or information gathering, less attention has been given to how technology can contribute to conflict mediation. This case study contributes to emerging research on the use of state-of-the-art machine learning technologies and techniques in conflict mediation processes. Using dialogue transcripts from peace negotiations in Yemen, this study shows how machine-learning can effectively support mediating teams by providing them with tools for knowledge management, extraction and conflict analysis. Apart from illustrating the potential of machine learning tools in conflict mediation, the article also emphasizes the importance of interdisciplinary and participatory, cocreation methodology for the development of context-sensitive and targeted tools and to ensure meaningful and responsible implementation.
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通过机器学习支持也门战争中的和平谈判
当今的冲突正变得越来越复杂、多变和碎片化,往往涉及众多利益多样且往往存在分歧的国家和国际行动者。这一发展给冲突调解带来了重大挑战,因为调解人努力理解冲突动态,例如冲突各方的范围及其政治立场的演变,在维持和平中区分相关和不太相关的行动者,或确定关键冲突问题及其相互依存关系。国际和平努力似乎不足以成功应对这些挑战。虽然技术已经在一系列与冲突有关的领域进行试验和使用,例如冲突预测或信息收集,但对技术如何有助于冲突调解的关注较少。本案例研究有助于在冲突调解过程中使用最先进的机器学习技术和技术的新兴研究。本研究利用也门和平谈判的对话记录,展示了机器学习如何通过为调解团队提供知识管理、提取和冲突分析工具,有效地支持他们。除了说明机器学习工具在冲突调解中的潜力外,文章还强调了跨学科和参与式共同创造方法的重要性,以开发上下文敏感和有针对性的工具,并确保有意义和负责任的实施。
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来源期刊
CiteScore
3.10
自引率
0.00%
发文量
0
审稿时长
12 weeks
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