A New Task and Dataset on Detecting Attacks on Human Rights Defenders

Shihao Ran, Di Lu, Joel Tetreault, A. Cahill, A. Jaimes
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引用次数: 0

Abstract

The ability to conduct retrospective analyses of attacks on human rights defenders over time and by location is important for humanitarian organizations to better understand historical or ongoing human rights violations and thus better manage the global impact of such events. We hypothesize that NLP can support such efforts by quickly processing large collections of news articles to detect and summarize the characteristics of attacks on human rights defenders. To that end, we propose a new dataset for detecting Attacks on Human Rights Defenders (HRDsAttack) consisting of crowdsourced annotations on 500 online news articles. The annotations include fine-grained information about the type and location of the attacks, as well as information about the victim(s). We demonstrate the usefulness of the dataset by using it to train and evaluate baseline models on several sub-tasks to predict the annotated characteristics.
探测对人权维护者的攻击的新任务和数据集
对按时间和地点对人权维护者的攻击进行回顾性分析的能力对于人道主义组织更好地了解历史上或正在发生的侵犯人权行为,从而更好地管理此类事件的全球影响非常重要。我们假设NLP可以通过快速处理大量新闻文章来检测和总结针对人权维护者的攻击特征,从而支持这些努力。为此,我们提出了一个新的数据集,用于检测对人权维护者的攻击(HRDsAttack),该数据集由500篇在线新闻文章的众包注释组成。注释包括关于攻击类型和位置的细粒度信息,以及关于受害者的信息。我们通过使用该数据集来训练和评估几个子任务上的基线模型来预测注释特征,从而证明了该数据集的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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