AimeLaw at ALQAC 2021: Enriching Neural Network Models with Legal-Domain Knowledge

Ngo Quang Huy, Nguyen Manh Duc Tuan, Nguyen Anh Duong, Pham Quang Nhat Minh
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引用次数: 5

Abstract

In this paper, we present our participated systems for three Vietnamese legal text processing tasks at Automated Legal Question Answering Competition (ALQAC 2021). In our systems, we leverage the strength of traditional information retrieval methods (BM25), pre-trained masked language models (BERT), and legal domain knowledge. Our proposed methods help to overcome the shortage of training data. Especially, in the legal textual entailment task, we propose a novel data augmentation method that is based on legal domain knowledge. Evaluation results show the effectiveness of our proposed methods. Our team (AimeLaw) obtained the first prize in Task 2 (legal textual entailment) with 69.89% of accuracy; ranked second in Task 1 (legal document retrieval) with 80.61% of F2 and in Task 3 (legal question answering) with 64.77% of accuracy. We even improved the result on Task 2 to 72.16% in an extra experiment.
ALQAC 2021:用法律领域知识丰富神经网络模型
在本文中,我们展示了我们在自动法律问答比赛(ALQAC 2021)中参与的三个越南法律文本处理任务的系统。在我们的系统中,我们利用了传统信息检索方法(BM25)、预训练屏蔽语言模型(BERT)和法律领域知识的优势。我们提出的方法有助于克服训练数据的不足。特别是在法律文本蕴涵任务中,我们提出了一种基于法律领域知识的数据增强方法。评价结果表明了所提方法的有效性。我们的团队(AimeLaw)在Task 2(法律文本蕴涵)中以69.89%的准确率获得一等奖;在任务1(法律文件检索)中以80.61%的准确率排名第二,在任务3(法律问题回答)中以64.77%的准确率排名第二。我们甚至在一个额外的实验中把Task 2的结果提高到了72.16%。
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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