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Discourse Understanding and Factual Consistency in Abstractive Summarization

机译:话语理解和抽象概述的事实一致性

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We introduce a general framework for abstractive summarization with factual consistency and distinct modeling of the narrative flow in an output summary. Our work addresses current limitations of models for abstractive summarization that often hallucinate information or generate summaries with coherence issues. To generate abstractive summaries with factual consistency and narrative flow, we propose Cooperative Generator - Discriminator Networks (Co-opNet), a novel transformer-based framework where a generator works with a discriminator architecture to compose coherent long-form summaries. We explore four different discriminator objectives which each capture a different aspect of coherence, including whether salient spans of generated abstracts are hallucinated or appear in the input context, and the likelihood of sentence adjacency in generated abstracts. We measure the ability of Co-opNet to learn these objectives with arXiv scientific papers, using the abstracts as a proxy for gold long-form scientific article summaries. Empirical results from automatic and human evaluations demonstrate that Co-opNet learns to summarize with considerably improved global coherence compared to competitive baselines.
机译:我们介绍了一种综合框架,可与输出摘要中的叙述流程的实际一致性和不同建模概述。我们的工作解决了抽象概要模型的当前限制,这通常是幻觉的信息或产生与一致性问题的摘要。为了产生具有事实一致性和叙述流的抽象摘要,我们提出了合作发电机 - 鉴别器网络(CO-OPNET),这是一种基于新型变换器的框架,其中发电机与鉴别者架构合作以构思连贯的长形摘要。我们探讨了四种不同的鉴别者目标,每个鉴别者目标捕获相干性的不同方面,包括生成摘要的突出跨度是幻觉还是出现在输入上下文中,以及生成的摘要中句子邻接的可能性。我们衡量CO-OPNET与Arxiv科学论文学习这些目标的能力,使用摘要作为黄金长形科学文章摘要的代理。来自自动和人类评估的经验结果表明,与竞争基本线相比,共同OPNET学会总结总结全球相干性。

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