ArMT-TNN: Enhancing natural language understanding performance through hard parameter multitask learning in Arabic

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Knowledge-Based and Intelligent Engineering Systems Pub Date : 2024-01-11 DOI:10.3233/kes-230192
Ali Alkhathlan, Khalid Alomar
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Abstract

Multitask learning (MTL) is a machine learning paradigm where a single model is trained to perform several tasks simultaneously. Despite the considerable amount of research on MTL, the majority of it has been centered around English language, while other language such as Arabic have not received as much attention. Most existing Arabic NLP techniques concentrate on single or multitask learning, sharing just a limited number of tasks, between two or three tasks. To address this gap, we present ArMT-TNN, an Arabic Multi-Task Learning using Transformer Neural Network, designed for Arabic natural language understanding (ANLU) tasks. Our approach involves sharing learned information between eight ANLU tasks, allowing for a single model to solve all of them. We achieve this by fine-tuning all tasks simultaneously and using multiple pre-trained Bidirectional Transformer language models, like BERT, that are specifically designed for Arabic language processing. Additionally, we explore the effectiveness of various Arabic language models (LMs) that have been pre-trained on different types of Arabic text, such as Modern Standard Arabic (MSA) and Arabic dialects. Our approach demonstrated outstanding performance compared to all current models on four test sets within the ALUE benchmark, namely MQ2Q, OOLD, SVREG, and SEC, by margins of 3.9%, 3.8%, 10.1%, and 3.7%, respectively. Nonetheless, our approach did not perform as well on the remaining tasks due to the negative transfer of knowledge. This finding highlights the importance of carefully selecting tasks when constructing a benchmark. Our experiments also show that LMs which were pretrained on text types that differ from the text type used for finetuned tasks can still perform well.
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ArMT-TNN:通过阿拉伯语硬参数多任务学习提高自然语言理解性能
多任务学习(Multitask Learning,MTL)是一种机器学习范式,通过对单一模型的训练,可以同时执行多项任务。尽管有关多任务学习的研究数量可观,但大部分研究都是围绕英语展开的,而阿拉伯语等其他语言则没有受到如此多的关注。大多数现有的阿拉伯语 NLP 技术都集中在单任务或多任务学习上,只分担有限数量的任务,如两个或三个任务。为了填补这一空白,我们提出了 ArMT-TNN,一种使用变换器神经网络进行阿拉伯语多任务学习的方法,专为阿拉伯语自然语言理解(ANLU)任务而设计。我们的方法涉及在八个 ANLU 任务之间共享学习信息,从而使一个模型能够解决所有任务。为此,我们同时对所有任务进行微调,并使用多个预先训练好的双向变换器语言模型(如 BERT),这些模型是专为阿拉伯语处理而设计的。此外,我们还探索了各种阿拉伯语语言模型 (LM) 的有效性,这些模型已在不同类型的阿拉伯语文本(如现代标准阿拉伯语 (MSA) 和阿拉伯方言)上进行了预先训练。在 ALUE 基准的四个测试集(即 MQ2Q、OOLD、SVREG 和 SEC)上,我们的方法与所有现有模型相比表现出色,优势分别为 3.9%、3.8%、10.1% 和 3.7%。然而,由于知识的负迁移,我们的方法在其余任务中的表现并不理想。这一发现凸显了在构建基准时仔细选择任务的重要性。我们的实验还表明,对文本类型进行预训练的 LM,如果与用于微调任务的文本类型不同,仍然可以表现出色。
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CiteScore
2.10
自引率
0.00%
发文量
22
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