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No Permanent Friends or Enemies: Tracking Relationships between Nations from News

机译:没有永久的朋友或敌人:从新闻中追踪国家之间的关系

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Understanding the dynamics of international politics is important yet challenging for civilians. In this work, we explore unsupervised neural models to infer relations between nations from news articles. We extend existing models by incorporating shallow linguistics information and propose a new automatic evaluation metric that aligns relationship dynamics with manually annotated key events. As understanding international relations requires carefully analyzing complex relationships, we conduct in-pcrson human evaluations with three groups of participants. Overall, humans prefer the outputs of our model and give insightful feedback that suggests future directions for human-centered models. Furthermore, our model reveals interesting regional differences in news coverage. For instance, with respect to US-China relations. Singaporean media focus more on "strengthening" and "purchasing", while US media focus more on "criticizing" and "denouncing".
机译:了解国际政治的动态是重要的,但对平民而言却是挑战。在这项工作中,我们探索了无监督的神经模型来从新闻文章中推断国家之间的关系。我们通过合并浅层语言信息来扩展现有模型,并提出一种新的自动评估度量,该度量将关系动态与手动注释的关键事件对齐。由于了解国际关系需要仔细分析复杂的关系,因此我们与三组参与者进行了即时的人为评价。总体而言,人类更喜欢我们模型的输出,并提供有见地的反馈,这些反馈为以人为本的模型的未来发展方向提供了建议。此外,我们的模型揭示了新闻报道中有趣的区域差异。例如,关于美中关系。新加坡媒体更多地关注“加强”和“购买”,而美国媒体则更多地关注“批评”和“谴责”。

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