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Ensure the Correctness of the Summary: Incorporate Entailment Knowledge into Abstractive Sentence Summarization

机译:确保摘要的正确性:将有关知识纳入抽象句概述

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In this paper, we investigate the sentence summarization task that produces a summary from a source sentence. Neural sequence-to-sequence models have gained considerable success for this task, while most existing approaches only focus on improving word overlap between the generated summary and the reference, which ignore the correctness, i.e., the summary should not contain error messages with respect to the source sentence. We argue that correctness is an essential requirement for summarization systems. Considering a correct summary is seman-tically entailed by the source sentence, we incorporate entailment knowledge into abstractive summarization models. We propose an cntailment-aware encoder under multi-task framework (i.e., summarization generation and entailment recognition) and an cntailment-aware decoder by entailment Reward Augmented Maximum Likelihood (RAML) training. Experimental results demonstrate that our models significantly outperform baselines from the aspects of informative-ness and correctness.
机译:在本文中,我们调查了从源句中产生摘要的句子摘要任务。神经序列到序列模型对此任务获得了相当大的成功,而大多数现有方法仅关注改善生成的摘要和参考之间的单词重叠,忽略正确性,即摘要不应包含关于相对于的错误消息源码句子。我们认为正确性是对摘要系统的基本要求。考虑到正确的摘要是由源句的Seman-tive,我们将征集知识纳入抽象摘要模型。我们在多任务框架(即,摘要生成和征兆识别)下提出了一个CNTailment-Impure的编码器,并通过entailment奖励增强了最大似然(RAML)训练的CNTailment-Aware解码器。实验结果表明,我们的模型显着优异地占据了信息丰富的方面和正确性的基线。

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