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Abstractive Summarization Model with a Feature-Enhanced Seq2Seq Structure

Authors :
Tao Xie
Bin Xue
Jingzhou Ji
Zepeng Hao
Source :
ACIRS
Publication Year :
2020
Publisher :
IEEE, 2020.

Abstract

ive text summarization task is mainly through deep learning method to summarize one or more documents to produce a concise summary that can express the main meaning of the document. Most methods are mainly based on the traditional Seq2Seq structure, but the traditional Seq2Seq structure has limited ability to capture and store long-term features and global features, resulting in a lack of information in the generated summary. In our paper, we put forward a new abstractive summarization model based on feature-enhanced Seq2Seq structure for single document summarization task. This model utilizes two types of feature capture networks to improve the encoder and decoder in traditional Seq2Seq structure, to enhance the model’s ability to capture and store long-term features and global features, so that the generated summary more informative and more fluency. Finally, we verified the model we proposed on the CNN/DailyMail dataset. Experimental results demonstrate that the model proposed in this paper is more effective than the baseline model, and has improved by 5.6%, 5.3%, 6.2% on the three metrics R-1, R-2, and R-L.

Details

Database :
OpenAIRE
Journal :
2020 5th Asia-Pacific Conference on Intelligent Robot Systems (ACIRS)
Accession number :
edsair.doi...........7ec08797019a7d26bc1f39d403b87fe7
Full Text :
https://doi.org/10.1109/acirs49895.2020.9162627