论文标题

通过神经前进泊松过程揭示气候与政治暴力之间的激发因果关系

Revealing the Excitation Causality between Climate and Political Violence via a Neural Forward-Intensity Poisson Process

论文作者

Sun, Schyler C., Jin, Bailu, Wei, Zhuangkun, Guo, Weisi

论文摘要

气候和政治暴力之间的因果机制充满了复杂的机制。当前的定量因果模型依赖于一个或多个假设:(1)气候驱动因素持续产生冲突,(2)因果机制与冲突产生参数具有线性关系,//或(3)有足够的数据来通知先前的分布。然而,我们知道冲突驱动因素经常激发社会转型过程,导致暴力(例如,干旱迫使农业生产者加入城市民兵),但进一步的气候影响不一定会导致进一步的暴力。因此,不仅这种分叉关系高度非线性,而且通常缺乏数据来支持高分辨率建模的先前假设。在这里,我们的目标是通过提出神经前进泊松过程(NFIPP)模型来克服上述因果建模挑战。 NFIPP旨在捕获气候诱发的政治暴力的潜在非线性因果机制,同时稀疏和计时不确定数据。我们的结果跨越了近20年,并揭示了极端气候事件与各个国家的政治暴力之间的基于激发的因果关系。我们气候引起的冲突模型结果针对定性气候脆弱性指数进行了交叉验证。此外,我们标记了改善或减少可预测性增长的历史事件,这表明了领域专业知识在告知解释方面的重要性。

The causal mechanism between climate and political violence is fraught with complex mechanisms. Current quantitative causal models rely on one or more assumptions: (1) the climate drivers persistently generate conflict, (2) the causal mechanisms have a linear relationship with the conflict generation parameter, and/or (3) there is sufficient data to inform the prior distribution. Yet, we know conflict drivers often excite a social transformation process which leads to violence (e.g., drought forces agricultural producers to join urban militia), but further climate effects do not necessarily contribute to further violence. Therefore, not only is this bifurcation relationship highly non-linear, there is also often a lack of data to support prior assumptions for high resolution modeling. Here, we aim to overcome the aforementioned causal modeling challenges by proposing a neural forward-intensity Poisson process (NFIPP) model. The NFIPP is designed to capture the potential non-linear causal mechanism in climate induced political violence, whilst being robust to sparse and timing-uncertain data. Our results span 20 recent years and reveal an excitation-based causal link between extreme climate events and political violence across diverse countries. Our climate-induced conflict model results are cross-validated against qualitative climate vulnerability indices. Furthermore, we label historical events that either improve or reduce our predictability gain, demonstrating the importance of domain expertise in informing interpretation.

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