基于单方言语言模型的阿拉伯文本分类弱和半监督学习

Reem AlYami, Rabah A. Al-Zaidy
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引用次数: 0

摘要

缺乏资源,如用于低资源语言的注释数据集和工具,是针对使用这些语言的用户的自然语言处理(NLP)应用程序发展的一个重大障碍。尽管半监督学习和弱监督学习等学习技术在标注数据有限的文本分类情况下是有效的,但由于数据的总体稀疏性,无论是标记的还是未标记的,它们仍然没有在许多语言中得到广泛的研究。在本研究中,我们部署了弱监督和半监督学习方法用于低资源语言的文本分类,并解决了可能阻碍这些技术有效性的潜在限制。为此,我们提出了一套语言无关技术,用于大规模数据收集、自动数据注释和资源稀缺场景下的语言模型训练。具体来说,我们为代表性不足的语言或方言提出了一种新的数据收集管道,该管道与语言和任务无关,并且有足够的规模来训练能够在常见NLP任务上取得竞争结果的语言模型,正如我们的实验所示。这些模型将与研究界共享。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly and Semi-Supervised Learning for Arabic Text Classification using Monodialectal Language Models
The lack of resources such as annotated datasets and tools for low-resource languages is a significant obstacle to the advancement of Natural Language Processing (NLP) applications targeting users who speak these languages. Although learning techniques such as semi-supervised and weakly supervised learning are effective in text classification cases where annotated data is limited, they are still not widely investigated in many languages due to the sparsity of data altogether, both labeled and unlabeled. In this study, we deploy both weakly, and semi-supervised learning approaches for text classification in low-resource languages and address the underlying limitations that can hinder the effectiveness of these techniques. To that end, we propose a suite of language-agnostic techniques for large-scale data collection, automatic data annotation, and language model training in scenarios where resources are scarce. Specifically, we propose a novel data collection pipeline for under-represented languages, or dialects, that is language and task agnostic and of sufficient size for training a language model capable of achieving competitive results on common NLP tasks, as our experiments show. The models will be shared with the research community.
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