Modelling armed conflict risk under climate change with machine learning and time-series data

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作者
Quansheng Ge
Mengmeng Hao
Fangyu Ding
Dong Jiang
Jürgen Scheffran
David Helman
Tobias Ide
机构
[1] Chinese Academy of Sciences,Institute of Geographic Sciences and Natural Resources Research
[2] University of Chinese Academy of Sciences,College of Resources and Environment
[3] Key Laboratory of Carrying Capacity Assessment for Resource and Environment,Institute of Geography, Center for Earth System Research and Sustainability
[4] Ministry of Land & Resources,Institute of Environmental Sciences, Department of Soil and Water Sciences, The Robert H. Smith Faculty of Agriculture, Food & Environment
[5] University of Hamburg,Advanced School for Environmental Studies
[6] The Hebrew University of Jerusalem,Centre for Biosecurity and One Health, Harry Butler Institute
[7] The Hebrew University of Jerusalem,undefined
[8] Murdoch University,undefined
[9] Murdoch,undefined
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摘要
Understanding the risk of armed conflict is essential for promoting peace. Although the relationship between climate variability and armed conflict has been studied by the research community for decades with quantitative and qualitative methods at different spatial and temporal scales, causal linkages at a global scale remain poorly understood. Here we adopt a quantitative modelling framework based on machine learning to infer potential causal linkages from high-frequency time-series data and simulate the risk of armed conflict worldwide from 2000–2015. Our results reveal that the risk of armed conflict is primarily influenced by stable background contexts with complex patterns, followed by climate deviations related covariates. The inferred patterns show that positive temperature deviations or precipitation extremes are associated with increased risk of armed conflict worldwide. Our findings indicate that a better understanding of climate-conflict linkages at the global scale enhances the spatiotemporal modelling capacity for the risk of armed conflict.
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