Integrating Semantic Information into Sketchy Reading Module of Retro-Reader for Vietnamese Machine Reading Comprehension

Hang Le, Viet-Duc Ho, Duc-Vu Nguyen, N. Nguyen
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引用次数: 1

Abstract

Machine Reading Comprehension has become one of the most advanced and popular research topics in the fields of Natural Language Processing in recent years. The classification of answerability questions is a relatively significant sub-task in machine reading comprehension; however, there haven't been many studies. Retro-Reader is one of the studies that has solved this problem effectively. However, the encoders of most traditional machine reading comprehension models in general and Retro-Reader, in particular, have not been able to exploit the contextual semantic information of the context completely. Inspired by SemBERT, we use semantic role labels from the Semantic Role Labeling (SRL) task to add semantics to pre-trained language models such as mBERT, XLM-R, PhoBERT. This experiment was conducted to compare the influence of semantics on the classification of answerability for the Vietnamese machine reading comprehension. Additionally, we hope this experiment will enhance the encoder for the Retro-Reader model's Sketchy Reading Module. The improved Retro-Reader model's encoder with semantics was first applied to the Vietnamese Machine Reading Comprehension task and obtained positive results.
将语义信息整合到越南语机器阅读理解的复古阅读器略读模块中
机器阅读理解是近年来自然语言处理领域最先进、最热门的研究课题之一。可答性问题分类是机器阅读理解中一个比较重要的子任务;然而,这方面的研究并不多。Retro-Reader是有效解决这一问题的研究之一。然而,大多数传统机器阅读理解模型的编码器,特别是Retro-Reader,并不能完全利用上下文的上下文语义信息。受SemBERT的启发,我们使用语义角色标签(semantic role Labeling, SRL)任务中的语义角色标签向预训练的语言模型(如mBERT、XLM-R、PhoBERT)添加语义。本实验旨在比较语义对越南语机器阅读理解可答性分类的影响。此外,我们希望这个实验可以增强Retro-Reader模型的草图阅读模块的编码器。将改进后的retroreader模型的语义编码器首次应用于越南语机器阅读理解任务,并取得了积极的效果。
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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