Improved Generalization of Arabic Text Classifiers

Alaa Khaddaj, Hazem M. Hajj, W. El-Hajj
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引用次数: 7

Abstract

While transfer learning for text has been very active in the English language, progress in Arabic has been slow, including the use of Domain Adaptation (DA). Domain Adaptation is used to generalize the performance of any classifier by trying to balance the classifier’s accuracy for a particular task among different text domains. In this paper, we propose and evaluate two variants of a domain adaptation technique: the first is a base model called Domain Adversarial Neural Network (DANN), while the second is a variation that incorporates representational learning. Similar to previous approaches, we propose the use of proxy A-distance as a metric to assess the success of generalization. We make use of ArSentDLEV, a multi-topic dataset collected from the Levantine countries, to test the performance of the models. We show the superiority of the proposed method in accuracy and robustness when dealing with the Arabic language.
阿拉伯语文本分类器的改进泛化
虽然在英语中文本迁移学习非常活跃,但在阿拉伯语中进展缓慢,包括使用领域适应(DA)。领域自适应是通过在不同的文本域中平衡分类器对特定任务的准确性来泛化分类器的性能。在本文中,我们提出并评估了领域自适应技术的两种变体:第一种是称为领域对抗神经网络(DANN)的基本模型,而第二种是包含表征学习的变体。与之前的方法类似,我们建议使用代理a -距离作为评估泛化成功的度量。我们使用从黎凡特国家收集的多主题数据集ArSentDLEV来测试模型的性能。在处理阿拉伯语时,我们证明了该方法在准确性和鲁棒性方面的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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