Lisa Mischer
2023
Enhancing State-of-the-Art NLP Models for Classical Arabic
Tariq Yousef
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Lisa Mischer
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Hamid Reza Hakimi
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Maxim Romanov
Proceedings of the Ancient Language Processing Workshop
Classical Arabic, like all other historical languages, lacks adequate training datasets and accurate “off-the-shelf” models that can be directly employed in the processing pipelines. In this paper, we present our in-progress work in developing and training deep learning models tailored for handling diverse tasks relevant to classical Arabic texts. Specifically, we focus on Named Entities Recognition, person relationships classification, toponym sub-classification, onomastic section boundaries detection, onomastic entities classification, as well as date recognition and classification. Our work aims to address the challenges associated with these tasks and provide effective solutions for analyzing classical Arabic texts. Although this work is still in progress, the preliminary results reported in the paper indicate excellent to satisfactory performance of the fine-tuned models, effectively meeting the intended goal for which they were trained.
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