ViMRC - VLSP 2021:基于无监督上下文选择器和对抗学习的越南语机器阅读理解实证研究

Minh Le Nguyen
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摘要

机器阅读理解(MRC)是一项伟大的NLP任务,需要专注于让机器阅读、扫描文档,并从文本中提取意义,就像人类读者一样。MRC系统面临的挑战之一是不仅要理解上下文以提取答案,还要意识到给定问题的可信度是否可能。虽然预训练语言模型(ptm)在许多NLP下游任务中表现出了良好的性能,但它在固定长度输入方面仍然存在局限性。我们提出了一个无监督的上下文选择器,它缩短了给定的上下文,但仍然包含相关上下文中的答案。在VLSP2021-MRC共享任务数据集上,我们还实验了几种由不可回答问题样本选择和不同对抗训练方法组成的训练策略,这些策略略微提高了EM分数2.5%和F1分数1%的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ViMRC - VLSP 2021: An empirical study of Vietnamese Machine Reading Comprehension with Unsupervised Context Selector and Adversarial Learning
Machine Reading Comprehension (MRC) is a great NLP task that requires concentration on making the machine read, scan documents, and extract meaning from the text, just like a human reader.One of the MRC system challenges is not only having to understand the context to extract the answer but also being aware of the trust-worthy of the given question is possible or not.Thought pre-trained language models (PTMs) have shown their performance on many NLP downstream tasks, but it still has a limitation in the fixed-length input. We propose an unsupervised context selector that shortens the given context but still contains the answers within related contexts.In VLSP2021-MRC shared task dataset, we also empirical several training strategies consisting of unanswerable question sample selection and different adversarial training approaches, which slightly boost the performance 2.5% in EM score and 1% in F1 score.
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