VNNLI - VLSP 2021:利用上下文词嵌入在双语数据集上的NLI任务

Quoc-Loc Duong
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引用次数: 0

摘要

自然语言推理(NLI)是自然语言理解的关键任务之一,我们通过VLSP2021-NLI共享任务竞赛来完成。VLSP2021-NLI共享任务是一场竞赛,旨在改进现有的NLI任务方法,从而提高应用效率。比赛的挑战之一是越南语和英语的数据集。在这篇文章中,我们报告了对竞赛的NLI任务的评价。我们首先实现了五重交叉验证评价方法。接下来,我们利用在跨语言语言数据集(如XLM-RoBERTa和RemBERT)上预训练的模型架构来创建用于分类的上下文词嵌入。我们的最终结果在组织者的测试数据集中达到了90.00%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The VNNLI - VLSP 2021: Leveraging Contextual Word Embedding for NLI Task on Bilingual Dataset
Natural Language Inference (NLI) is one of the critical tasks in natural language understanding which we take through the VLSP2021-NLI Shared Task competition. VLSP2021-NLI Shared Task is a competition to improve existing methods for NLI tasks, thereby enhancing the efficiency of applications. One of the challenges of the competition is the dataset in both Vietnamese and English. In this article, we report on evaluating the NLI task of the competition. We first implement the 5-fold cross-validation evaluation method. We following leverage model architectures pre-trained on cross-lingual language datasets such as XLM-RoBERTa and RemBERT to create contextual word embeddings for classification. Our final result reaches 90.00% on the test dataset of the organizers.
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