基于知识语言模型的汉语机器阅读理解

Wentong Chen, C. Fan, Yuexin Wu, Yitong Wang
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引用次数: 0

摘要

机器阅读理解(MRC)是一项需要机器根据给定的上下文回答相关问题的任务。近年来,随着深度学习和大数据的发展,它引起了广泛的关注。考虑到人类在理解文本时会联想到一些外部的相关知识,研究者提出了一种在给定语境之外引入知识来辅助阅读的方法,这种方法被称为基于知识的机器阅读理解(KBMRC)。然而,目前对该方法的研究还比较分散,相关知识的检索和融合在应用中仍然是两个挑战,特别是在中文MRC中。本文的贡献主要有以下三点:首先,为了解决相关知识检索问题,建立了相关知识集;其次,为了解决相关知识的融合问题,提出了一种负样本生成策略,并训练了一个包含知识的语言模型。最后,在此基础上建立了双塔融合模型。在中文阅读理解数据集CMRC2018上的实验表明,与没有外部知识的基线方法相比,我们的方法有一定的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Machine Reading Comprehension Based on Language Model Containing Knowledge
Machine reading comprehension (MRC) is a task that requires machines to answer relevant questions based on a given context. In recent years, it has attracted extensive attention with the development of deep learning and big data. Considering that human beings will associate some external relevant knowledge when understanding the text, researchers have proposed a method of introducing knowledge outside the given context to assist reading and this method is called Knowledge-Based Machine Reading Comprehension (KBMRC). However, the current research on this method is still scattered, and the retrieval and fusion of relevant knowledge are still two challenges in application, especially in Chinese MRC. The contribution of this paper mainly on the following three points: Firstly, in order to resolve the problem of related knowledge retrieval, we build up a related knowledge set. Secondly, in order to resolve the problem of related knowledge fusion, we propose a negative sample generation strategy and train a language model containing knowledge. Finally, a twin-tower fusion model is constructed based on this model. The experiments on Chinese reading comprehension dataset CMRC2018 show that our method has a certain improvement compared with the baseline method without external knowledge.
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