基于对抗性学习的非平行语料库句子简化

Takashi Kawashima, T. Takagi
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引用次数: 2

摘要

在这项研究中,我们提出了一个非平行语料库的句子简化与对抗学习。近年来,基于统计机器翻译框架和神经网络的句子简化得到了积极的研究。然而,大多数方法需要一个大的并行语料库,这是昂贵的构建。在本文中,我们的目的是使用非并行语料库对开放数据en-Wikipedia和Simple-Wikipedia中的文章进行句子简化。我们使用带有对抗学习的风格迁移框架进行非平行语料库的学习,并将Barzilay等人的先前工作改编为句子简化作为基本框架。此外,从提高句子意义保留的角度出发,在基框架中加入了预训练重构损失和循环一致性损失。作为扩展的结果,我们还提高了所提出模型的句子质量输出。CCS概念•计算方法$\右划$自然语言生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentence Simplification from Non-Parallel Corpus with Adversarial Learning
In this study, we propose sentence simplification from a non-parallel corpus with adversarial learning. In recent years, sentence simplification based on a statistical machine translation framework and neural networks have been actively studied. However, most methods require a large parallel corpus, which is expensive to build. In this paper, our purpose is sentence simplification with a non-parallel corpus in open data en-Wikipedia and Simple-Wikipedia articles. We use a style transfer framework with adversarial learning for learning by non-parallel corpus and adapted a prior work [by Barzilay et al.] to sentence simplification as a base framework. Furthermore, from the perspective of improving retention of sentence meaning, we add pretraining reconstruction loss and cycle consistency loss to the base framework. We also improve the sentence quality output from the proposed model as a result of the expansion. CCS CONCEPTS • Computing methodologies $\rightarrow$ Natural language generation.
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