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Named Entity Recognition for Arabic Social Media

机译:命名为阿拉伯社交媒体的实体识别

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The majority of research on Arabic Named Entity Recognition (NER) addresses the the task for newswire genre, where the language used is Modern Standard Arabic (MSA), however, the need to study this task in social media is becoming more vital. Social media is characterized by the use of both MSA and Dialectal Arabic (DA), with often code switching between the two language varieties. Despite some common characteristics between MSA and DA, there are significant differences between which result in poor performance when MSA targeting systems are applied for NER in DA. Additionally, most NER systems rely primarily on gazetteers, which can be more challenging in a social media processing context due to an inherent low coverage. In this paper, we present a gazetteers-free NER system for Dialectal data that yields an F1 score of 72.68% which is an absolute improvement of ≈ 2 - 3% over a comparable state-of-the-art gazetteer based DA-NER system.
机译:阿拉伯语命名实体识别(NER)的大多数研究都解决了新闻界类型的任务,其中使用的语言是现代标准阿拉伯语(MSA),但是,在社交媒体中研究这项任务的需要变得更加重要。社交媒体的特点是使用MSA和辩证阿拉伯语(DA),经常在两种语言品种之间切换。尽管MSA和DA之间存在一些常见的特征,但由于在DA中的NER应用MSA靶向系统时,这导致性能不佳。此外,由于固有的低覆盖率,大多数NER系统主要依赖于公鸡,这在社交媒体处理环境中可能更具挑战性。在本文中,我们为辩证数据提供了一种免费的NER系统,其出现了72.68%的F1分数,这在比较的最先进的宪报拓大的DA-NER系统中绝对改善了≈2 - 3% 。

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