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A Survey of Text Summarization Approaches Based on Deep Learning 被引量:1
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作者 Sheng-Luan Hou Xi-Kun Huang +4 位作者 Chao-Qun Fei Shu-Han Zhang Yang-Yang Li qi-lin sun Chuan-Qing Wang 《Journal of Computer Science & Technology》 SCIE EI CSCD 2021年第3期633-663,共31页
Automatic text summarization(ATS)has achieved impressive performance thanks to recent advances in deep learning(DL)and the availability of large-scale corpora.The key points in ATS are to estimate the salience of info... Automatic text summarization(ATS)has achieved impressive performance thanks to recent advances in deep learning(DL)and the availability of large-scale corpora.The key points in ATS are to estimate the salience of information and to generate coherent results.Recently,a variety of DL-based approaches have been developed for better considering these two aspects.However,there is still a lack of comprehensive literature review for DL-based ATS approaches.The aim of this paper is to comprehensively review significant DL-based approaches that have been proposed in the literature with respect to the notion of generic ATS tasks and provide a walk-through of their evolution.We first give an overview of ATS and DL.The comparisons of the datasets are also given,which are commonly used for model training,validation,and evaluation.Then we summarize single-document summarization approaches.After that,an overview of multi-document summarization approaches is given.We further analyze the performance of the popular ATS models on common datasets.Various popular approaches can be employed for different ATS tasks.Finally,we propose potential research directions in this fast-growing field.We hope this exploration can provide new insights into future research of DL-based ATS. 展开更多
关键词 automatic text summarization artificial intelligence deep learning attentional encoder-decoder natural language processing
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