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A Joint Sentence Scoring and Selection Framework for Neural Extractive Document Summarization

机译:神经提取文件总结的联合刑期评分与选择框架

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摘要

Extractive document summarization methods aim to extract important sentences to form a summary. Previous works perform this task by first scoring all sentences in the document then selecting most informative ones; while we propose to jointly learn the two steps with a novel end-to-end neural network framework. Specifically, the sentences in the input document are represented as real-valued vectors through a neural document encoder. Then the method builds the output summary by extracting important sentences one by one. Different from previous works, the proposed joint sentence scoring and selection framework directly predicts the relative sentence importance score according to both sentence content and previously selected sentences. We evaluate the proposed framework with two realizations: a hierarchical recurrent neural network based model; and a pre-training based model that uses BERT as the document encoder. Experiments on two datasets show that the proposed joint framework outperforms the state-of-the-art extractive summarization models which treat sentence scoring and selection as two subtasks.
机译:提取文件摘要方法旨在提取重要句子以形成摘要。以前的作品首次在文档中的所有句子中进行了执行此任务,然后选择大多数信息性;虽然我们建议与新的端到端神经网络框架共同学习这两个步骤。具体地,输入文档中的句子通过神经文档编码器表示为真实值的向量。然后,该方法通过一个接一个地提取重要句子来构建输出摘要。与以前的作品不同,所提出的联合句子评分和选择框架直接预测根据句子内容和先前选择的句子的相对句子重要评分。我们评估了两种实现的建议框架:基于分层经常性神经网络的模型;和一个基于预训练的模型,它使用BERT作为文档编码器。两个数据集的实验表明,所提出的联合框架优于最先进的提取摘要模型,这些模型将句子评分和选择作为两个子组织。

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