Generating Multiple-Length Summaries via Reinforcement Learning for Unsupervised Sentence Summarization

Dongmin Hyun, Xiting Wang, Chanyoung Park, Xing Xie, Hwanjo Yu
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引用次数: 4

Abstract

Sentence summarization shortens given texts while maintaining core contents of the texts. Unsupervised approaches have been studied to summarize texts without human-written summaries. However, recent unsupervised models are extractive, which remove words from texts and thus they are less flexible than abstractive summarization. In this work, we devise an abstractive model based on reinforcement learning without ground-truth summaries. We formulate the unsupervised summarization based on the Markov decision process with rewards representing the summary quality. To further enhance the summary quality, we develop a multi-summary learning mechanism that generates multiple summaries with varying lengths for a given text, while making the summaries mutually enhance each other. Experimental results show that the proposed model substantially outperforms both abstractive and extractive models, yet frequently generating new words not contained in input texts.
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基于强化学习的无监督句子摘要生成多长度摘要
句子摘要在保持文本核心内容的同时,缩短了给定文本。已经研究了无监督的方法来总结没有人类书面摘要的文本。然而,最近的无监督模型是抽取的,它从文本中删除单词,因此它们不如抽象摘要灵活。在这项工作中,我们设计了一个基于强化学习的抽象模型,没有真实摘要。我们提出了基于马尔可夫决策过程的无监督总结,奖励代表总结质量。为了进一步提高摘要质量,我们开发了一种多摘要学习机制,该机制可以为给定文本生成不同长度的多个摘要,同时使摘要相互增强。实验结果表明,该模型大大优于抽象模型和抽取模型,但经常生成输入文本中不包含的新词。
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