基于ArabicT5的性别改写任务生成方法

Sultan Alrowili, Vijay K. Shanker
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引用次数: 2

摘要

在生成任务(如机器翻译)中解决正确的性别问题一直是阿拉伯语NLP中被忽视的问题。然而,最近引入的阿拉伯语平行性别语料库(APGC)数据集为阿拉伯语性别重写任务建立了新的基线。为了解决性别重写任务,我们首先在17GB的阿拉伯语料库上预训练我们的新Seq2Seq ArabicT5模型。然后,我们使用新提出的方法在APGC数据集上继续预训练ArabicT5模型。我们的评估表明,当我们的ArabicT5模型在APGC数据集上训练时,与现有的最先进的方法相比,取得了具有竞争力的结果。此外,与其他阿拉伯语和多语言T5模型相比,我们的ArabicT5模型在APGC数据集上显示出更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Approach for Gender-Rewriting Task with ArabicT5
Addressing the correct gender in generative tasks (e.g., Machine Translation) has been an overlooked issue in the Arabic NLP. However, the recent introduction of the Arabic Parallel Gender Corpus (APGC) dataset has established new baselines for the Arabic Gender Rewriting task. To address the Gender Rewriting task, we first pre-train our new Seq2Seq ArabicT5 model on a 17GB of Arabic Corpora. Then, we continue pre-training our ArabicT5 model on the APGC dataset using a newly proposed method. Our evaluation shows that our ArabicT5 model, when trained on the APGC dataset, achieved competitive results against existing state-of-the-art methods. In addition, our ArabicT5 model shows better results on the APGC dataset compared to other Arabic and multilingual T5 models.
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