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Activism via attention: interpretable spatiotemporal learning to forecast protest activities

机译:通过注意激发活动:可解释的时空学习预测抗议活动

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The diffusion of new information and communication technologies—social media in particular—has played a key role in social and political activism in recent decades. In this paper, we propose a theory-motivated, spatiotemporal learning approach, ActAttn, that leverages social movement theories and a deep learning framework to examine the relationship between protest events and their social and geographical contexts as reflected in social media discussions. To do so, we introduce a novel predictive framework that incorporates a new design of attentional networks, and which effectively learns the spatiotemporal structure of features. Our approach is not only capable of forecasting the occurrence of future protests, but also provides theory-relevant interpretations—it allows for interpreting what features, from which places, have significant contributions on the protest forecasting model, as well as how they make those contributions. Our experiment results from three movement events indicate that ActAttn achieves superior forecasting performance, with interesting comparisons across the three events that provide insights into these recent movements.
机译:近几十年来,新信息和通信技术 - 社交媒体的扩散 - 在社会和政治活动中发挥了关键作用。在本文中,我们提出了一种理论激励,即施法的时尚学习方法,即采取社会运动理论和深入学习框架,以研究抗议事件与社会媒体讨论中反映的抗议活动与社会和地域环境之间的关系。为此,我们介绍了一种新颖的预测框架,该框架包含了一种新的注意网络设计,并有效地学习了特征的时空结构。我们的方法不仅能够预测未来抗议的发生,还提供理论相关的解释 - 它允许解释哪些功能,从哪些地方对抗议预测模型有重大贡献,以及它们如何使这些贡献如何。我们的实验结果由三个运动事件表明,Actattn达到了卓越的预测性能,在三个事件中具有有趣的比较,提供了对这些最近运动的见解。

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