Abstractive Document Summarization with a Graph-Based Attentional Neural Model

@inproceedings{Tan2017AbstractiveDS,
  title={Abstractive Document Summarization with a Graph-Based Attentional Neural Model},
  author={Jiwei Tan and Xiaojun Wan and J. Xiao},
  booktitle={ACL},
  year={2017}
}
Abstractive summarization is the ultimate goal of document summarization research, but previously it is less investigated due to the immaturity of text generation techniques. Recently impressive progress has been made to abstractive sentence summarization using neural models. Unfortunately, attempts on abstractive document summarization are still in a primitive stage, and the evaluation results are worse than extractive methods on benchmark datasets. In this paper, we review the difficulties of… Expand
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