Fine Tuning an AraT5 Transformer for Arabic Abstractive Summarization

Yasmin Einieh, Amal Almansour, A. Jamal
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Abstract

Creating an abstractive summary of a document by rephrasing its most crucial sentences is a challenging but crucial task in natural language processing. The field witnessed a remarkable development with deep learning techniques, especially with the emergence of pre-trained models that achieved the best results by training them on very large data and trained later on specific tasks. In this paper, we used the T5 model, which achieved results that are considered the best in different tasks of natural language processing. AraT5 is the newly launched Arabic language version, as we have worked on fine-tuning it on a dataset of 267,000 Arabic articles. The model was evaluated through ROUGE-1, ROUGE-2, ROUGE-L, and BLEU and the results were 0.494 0.339 0.469 0.4224, respectively. In addition, the AraT5 model is superior to other state-of-the-art research studies using the sequence-to-sequence model.
用于阿拉伯语抽象摘要的AraT5变压器的微调
在自然语言处理中,通过改写最重要的句子来创建文档的抽象摘要是一项具有挑战性但又至关重要的任务。该领域见证了深度学习技术的显著发展,特别是随着预训练模型的出现,这些模型通过在非常大的数据上进行训练,然后在特定任务上进行训练,从而获得了最佳结果。在本文中,我们使用了T5模型,该模型在自然语言处理的不同任务中获得了被认为是最好的结果。AraT5是新推出的阿拉伯语版本,因为我们已经在267,000篇阿拉伯语文章的数据集上对其进行了微调。通过ROUGE-1、ROUGE-2、ROUGE-L和BLEU对模型进行评价,结果分别为0.494 0.339 0.469 0.4224。此外,AraT5模型优于其他使用序列到序列模型的最先进的研究。
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