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Arabic Diacritics in the Wild: Exploiting Opportunities for Improved Diacritization

Published 9 Jun 2024 in cs.CL | (2406.05760v1)

Abstract: The widespread absence of diacritical marks in Arabic text poses a significant challenge for Arabic NLP. This paper explores instances of naturally occurring diacritics, referred to as "diacritics in the wild," to unveil patterns and latent information across six diverse genres: news articles, novels, children's books, poetry, political documents, and ChatGPT outputs. We present a new annotated dataset that maps real-world partially diacritized words to their maximal full diacritization in context. Additionally, we propose extensions to the analyze-and-disambiguate approach in Arabic NLP to leverage these diacritics, resulting in notable improvements. Our contributions encompass a thorough analysis, valuable datasets, and an extended diacritization algorithm. We release our code and datasets as open source.

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