Domain Adaptation for Arabic Crisis Response

Reem AlRashdi, Simon E. M. O'Keefe
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Abstract

Deep learning algorithms can identify related tweets to reduce the information overload that prevents humanitarian organisations from using valuable Twitter posts. However, they rely heavily on human-labelled data, which are unavailable for emerging crises. Because each crisis has its own features, such as location, time and social media response, current models are known to suffer from generalising to unseen disaster events when pre-trained on past ones.Tweet classifiers for low-resource languages like Arabic has the additional issue of limited labelled data duplicates caused by the absence of good language resources. Thus, we propose a novel domain adaptation approach that employs distant supervision to automatically label tweets from emerging Arabic crisis events to be used to train a model along with available human-labelled data. We evaluate our work on data from seven 2018–2020 Arabic events from different crisis types (flood, explosion, virus and storm). Results show that our method outperforms self-training in identifying crisis-related tweets in real-time scenarios and can be seen as a robust Arabic tweet classifier.
阿拉伯危机应对的领域适应
深度学习算法可以识别相关的推文,以减少阻止人道主义组织使用有价值的推文的信息过载。然而,它们严重依赖于人为标记的数据,而这些数据在新出现的危机中是不可用的。由于每次危机都有自己的特点,比如地点、时间和社交媒体的反应,众所周知,当前的模型在对过去的灾难事件进行预训练时,容易泛化到看不见的灾难事件。像阿拉伯语这样的低资源语言的Tweet分类器还有一个额外的问题,即由于缺乏好的语言资源而导致的有限的标记数据重复。因此,我们提出了一种新的领域自适应方法,该方法采用远程监督来自动标记来自新兴阿拉伯危机事件的推文,并与可用的人工标记数据一起用于训练模型。我们根据2018-2020年不同危机类型(洪水、爆炸、病毒和风暴)的七个阿拉伯事件的数据评估我们的工作。结果表明,我们的方法在实时场景中识别与危机相关的推文方面优于自我训练,可以被视为一个鲁棒的阿拉伯语推文分类器。
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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