The Effect of Arabic Dialect Familiarity on Data Annotation

Ibrahim Abu Farha, Walid Magdy
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引用次数: 6

Abstract

Data annotation is the foundation of most natural language processing (NLP) tasks. However, data annotation is complex and there is often no specific correct label, especially in subjective tasks. Data annotation is affected by the annotators’ ability to understand the provided data. In the case of Arabic, this is important due to the large dialectal variety. In this paper, we analyse how Arabic speakers understand other dialects in written text. Also, we analyse the effect of dialect familiarity on the quality of data annotation, focusing on Arabic sarcasm detection. This is done by collecting third-party labels and comparing them to high-quality first-party labels. Our analysis shows that annotators tend to better identify their own dialect and they are prone to confuse dialects they are unfamiliar with. For task labels, annotators tend to perform better on their dialect or dialects they are familiar with. Finally, females tend to perform better than males on the sarcasm detection task. We suggest that to guarantee high-quality labels, researchers should recruit native dialect speakers for annotation.
阿拉伯语方言熟悉度对数据标注的影响
数据标注是大多数自然语言处理任务的基础。然而,数据标注是复杂的,往往没有特定的正确标签,特别是在主观任务中。数据注释受注释者理解所提供数据的能力的影响。在阿拉伯语的情况下,这是重要的,因为大量的方言种类。在本文中,我们分析了阿拉伯语使用者如何在书面文本中理解其他方言。此外,我们还分析了方言熟悉度对数据标注质量的影响,重点是阿拉伯语讽刺检测。这是通过收集第三方标签,并与高质量的第一方标签进行比较来实现的。我们的分析表明,注释者倾向于更好地识别自己的方言,他们容易混淆他们不熟悉的方言。对于任务标签,注释者倾向于在他们的方言或他们熟悉的方言上表现更好。最后,女性在讽刺检测任务上的表现优于男性。我们建议,为了保证高质量的标签,研究人员应该招募母语人士进行注释。
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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