hULMonA: The Universal Language Model in Arabic

Obeida ElJundi, Wissam Antoun, Nour El Droubi, Hazem M. Hajj, W. El-Hajj, K. Shaban
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引用次数: 44

Abstract

Arabic is a complex language with limited resources which makes it challenging to produce accurate text classification tasks such as sentiment analysis. The utilization of transfer learning (TL) has recently shown promising results for advancing accuracy of text classification in English. TL models are pre-trained on large corpora, and then fine-tuned on task-specific datasets. In particular, universal language models (ULMs), such as recently developed BERT, have achieved state-of-the-art results in various NLP tasks in English. In this paper, we hypothesize that similar success can be achieved for Arabic. The work aims at supporting the hypothesis by developing the first Universal Language Model in Arabic (hULMonA - حلمنا meaning our dream), demonstrating its use for Arabic classifications tasks, and demonstrating how a pre-trained multi-lingual BERT can also be used for Arabic. We then conduct a benchmark study to evaluate both ULM successes with Arabic sentiment analysis. Experiment results show that the developed hULMonA and multi-lingual ULM are able to generalize well to multiple Arabic data sets and achieve new state of the art results in Arabic Sentiment Analysis for some of the tested sets.
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hULMonA:阿拉伯语的通用语言模型
阿拉伯语是一种复杂的语言,资源有限,这使得产生准确的文本分类任务(如情感分析)具有挑战性。近年来,迁移学习在提高英语文本分类准确率方面取得了可喜的成果。TL模型在大型语料库上进行预训练,然后在特定任务的数据集上进行微调。特别是,通用语言模型(ulm),如最近开发的BERT,已经在英语的各种NLP任务中取得了最先进的结果。在本文中,我们假设阿拉伯语也可以取得类似的成功。这项工作旨在通过开发阿拉伯语的第一个通用语言模型(hULMonA - حلمنا意味着我们的梦想)来支持这一假设,展示其用于阿拉伯语分类任务,并展示如何将预训练的多语言BERT也用于阿拉伯语。然后,我们进行了一个基准研究,用阿拉伯情绪分析来评估两个ULM的成功。实验结果表明,所开发的hULMonA和多语言ULM能够很好地泛化到多个阿拉伯语数据集,并在一些测试集上获得了新的阿拉伯语情感分析结果。
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