BiSET: Bi-directional Selective Encoding with Template for Abstractive Summarization

ACL 2019  ·  Kai Wang, Xiaojun Quan, Rui Wang ·

The success of neural summarization models stems from the meticulous encodings of source articles. To overcome the impediments of limited and sometimes noisy training data, one promising direction is to make better use of the available training data by applying filters during summarization. In this paper, we propose a novel Bi-directional Selective Encoding with Template (BiSET) model, which leverages template discovered from training data to softly select key information from each source article to guide its summarization process. Extensive experiments on a standard summarization dataset were conducted and the results show that the template-equipped BiSET model manages to improve the summarization performance significantly with a new state of the art.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Text Summarization GigaWord BiSET ROUGE-1 39.11 # 14
ROUGE-2 19.78 # 17
ROUGE-L 36.87 # 5

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