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Augmenting Neural Sentence Summarization Through Extractive Summarization

机译:通过提取综准增强神经句子摘要

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Neural sequence-to-sequence model has achieved great success in abstractive summarization task. However, due to the limit of input length, most of previous works can only utilize lead sentences as the input to generate the abstractive summarization, which ignores crucial information of the document. To alleviate this problem, we propose a novel approach to improve neural sentence summarization by using extractive summarization, which aims at taking full advantage of the document information as much as possible. Furthermore, we present both of streamline strategy and system combination strategy to achieve the fusion of the contents in different views, which can be easily adapted to other domains. Experimental results on CNN/Daily Mail dataset demonstrate both our proposed strategies can significantly improve the performance of neural sentence summarization.
机译:神经序列到序列模型在抽象摘要任务中取得了巨大成功。但是,由于输入长度的限制,之前的大多数作品只能利用引线句子作为输入来生成抽象摘要,这忽略了文档的重要信息。为了缓解这一问题,我们提出了一种新颖的方法,通过采用抽取综准提高神经句概括,这旨在尽可能充分利用文件信息。此外,我们展示了简化战略和系统组合策略,以实现不同视图中内容的融合,这可以很容易地适应其他域。 CNN /每日邮件数据集的实验结果表明,我们的拟议策略都可以显着提高神经句子摘要的表现。

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