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Papers/Neural Document Summarization by Jointly Learning to Score...

Neural Document Summarization by Jointly Learning to Score and Select Sentences

Qingyu Zhou, Nan Yang, Furu Wei, Shaohan Huang, Ming Zhou, Tiejun Zhao

2018-07-06ACL 2018 7Extractive Text SummarizationDocument SummarizationExtractive SummarizationExtractive Document Summarization
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Abstract

Sentence scoring and sentence selection are two main steps in extractive document summarization systems. However, previous works treat them as two separated subtasks. In this paper, we present a novel end-to-end neural network framework for extractive document summarization by jointly learning to score and select sentences. It first reads the document sentences with a hierarchical encoder to obtain the representation of sentences. Then it builds the output summary by extracting sentences one by one. Different from previous methods, our approach integrates the selection strategy into the scoring model, which directly predicts the relative importance given previously selected sentences. Experiments on the CNN/Daily Mail dataset show that the proposed framework significantly outperforms the state-of-the-art extractive summarization models.

Results

TaskDatasetMetricValueModel
Text SummarizationCNN / Daily MailROUGE-141.59NeuSUM
Text SummarizationCNN / Daily MailROUGE-219.01NeuSUM
Text SummarizationCNN / Daily MailROUGE-L37.98NeuSUM
Text SummarizationCNN / Daily MailROUGE-141.59NeuSUM
Text SummarizationCNN / Daily MailROUGE-219.01NeuSUM
Text SummarizationCNN / Daily MailROUGE-L37.98NeuSUM
Extractive Text SummarizationCNN / Daily MailROUGE-141.59NeuSUM
Extractive Text SummarizationCNN / Daily MailROUGE-219.01NeuSUM
Extractive Text SummarizationCNN / Daily MailROUGE-L37.98NeuSUM
Document SummarizationCNN / Daily MailROUGE-141.59NeuSUM
Document SummarizationCNN / Daily MailROUGE-219.01NeuSUM
Document SummarizationCNN / Daily MailROUGE-L37.98NeuSUM

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