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机器学习算法与自然语言处理出品
@公众号原创专栏作者 paiisall
学校 | 哈工大SCIR实验室在读博士生

Long

  • Multi-Fact Correction in Abstractive Text Summarization. Yue Dong, Shuohang Wang, Zhe Gan, Yu Cheng, Jackie Chi Kit Cheung and Jingjing Liu.
  • Unsupervised Reference-Free Summary Quality Evaluation via Contrastive Learning.Hanlu Wu, Tengfei Ma, Lingfei Wu, Tariro Manyumwa and Shouling Ji.
  • Multi-document Summarization with Maximal Marginal Relevance-guided Reinforcement Learning.Yuning Mao, Yanru Qu, Yiqing Xie, Xiang Ren and Jiawei Han.
  • MLSUM: The Multilingual Summarization Corpus.Thomas Scialom, Paul-Alexis Dray, Sylvain Lamprier, Benjamin Piwowarski and Jacopo Staiano.
  • Stepwise Extractive Summarization and Planning with Structured Transformers. Shashi Narayan, Joshua Maynez, Jakub Adamek, Daniele Pighin, Blaz Bratanic and Ryan McDonald.
  • Pre-training for Abstractive Document Summarization by Reinstating Source Text.Yanyan Zou, Xingxing Zhang, Wei Lu, Furu Wei and Ming Zhou.
  • Multi-View Sequence-to-Sequence Models with Conversational Structure for Abstractive Dialogue Summarization. Jiaao Chen and Diyi Yang.
  • Multi-hop Inference for Question-driven Summarization.Yang Deng, Wenxuan Zhang and Wai Lam.
  • Evaluating the Factual Consistency of Abstractive Text Summarization. Wojciech Kryscinski, Bryan McCann, Caiming Xiong and Richard Socher.
  • On Extractive and Abstractive Neural Document Summarization with Transformer Language Models. Jonathan Pilault, Raymond Li, Sandeep Subramanian and Chris Pal.
  • A Spectral Method for Unsupervised Multi-Document Summarization. Kexiang Wang, Baobao Chang and Zhifang Sui.
  • Better Highlighting: Creating Sub-Sentence Summary Highlights. Sangwoo Cho, Kaiqiang Song, Chen Li, Dong Yu, Hassan Foroosh and Fei Liu.
  • Coarse-to-Fine Query Focused Multi-Document Summarization. Yumo Xu and Mirella Lapata.
  • Compressive Summarization with Plausibility and Salience Modeling. Shrey Desai, Jiacheng Xu and Greg Durrett.
  • Few-Shot Learning for Opinion Summarization. Arthur Bražinskas, Mirella Lapata and Ivan Titov.
  • Friendly Topic Assistant for Transformer Based Abstractive Summarization. Zhengjue Wang, Zhibin Duan, Hao Zhang, chaojie wang, long tian, Bo Chen and Mingyuan Zhou.
  • Intrinsic Evaluation of Summarization Datasets. Rishi Bommasani and Claire Cardie.
  • Multistage Fusion with Forget Gate for Multimodal Summarization in Open-Domain Videos. Nayu Liu, Xian Sun, Hongfeng Yu, Wenkai Zhang and Guangluan Xu.
  • Neural Extractive Summarization with Hierarchical Attentive Heterogeneous Graph Network. Ruipeng Jia, Yanan Cao, Hengzhu Tang, Fang Fang, Cong Cao and Shi Wang.
  • Quantitative Argument Summarization and Beyond: Cross-Domain Key Point Analysis. Roy Bar-Haim, Yoav Kantor, Lilach Eden, Roni Friedman, Dan Lahav and Noam Slonim.
  • Re-evaluating Evaluation in Text Summarization. Manik Bhandari, Pranav Narayan Gour, Atabak Ashfaq, Pengfei Liu and Graham Neubig.
  • TESA: A Task in Entity Semantic Aggregation for Abstractive Summarization. Clément Jumel, Annie Louis and Jackie Chi Kit Cheung.
  • VMSMO: Learning to Generate Multimodal Summary for Video-based News Articles. Mingzhe Li, Xiuying Chen, Shen Gao, Zhangming Chan, Dongyan Zhao and Rui Yan.
  • What Have We Achieved on Text Summarization?. Dandan Huang, Leyang Cui, Sen Yang, Guangsheng Bao, Wang Kun, Jun Xie and Yue Zhang.
  • Q-learning with Language Model for Edit-based Unsupervised Summarization. Ryosuke Kohita, Akifumi Wachi, Yang Zhao and Ryuki Tachibana.

Short

  • Learning to Fuse Sentences with Transformers for Summarization.Logan Lebanoff,
  • Factual Error Correction for Abstractive Summarization Models. Meng Cao, Yue Dong, Jiapeng Wu and Jackie Chi Kit Cheung.
  • Franck Dernoncourt, Doo Soon Kim, Lidan Wang, Walter Chang and Fei Liu.
  • Modeling Content Importance for Summarization with Pre-trained Language Models. Liqiang Xiao, Lu Wang, Hao He and Yaohui Jin.
  • Multi-XScience: A Large-scale Dataset for Extreme Multi-document Summarization of Scientific Articles. Yao Lu, Yue Dong and Laurent Charlin.
  • Summarizing Text on Any Aspects: A Knowledge-Informed Weakly-Supervised Approach. Bowen Tan, Lianhui Qin, Eric Xing and Zhiting Hu.
  • Understanding Neural Abstractive Summarization Models via Uncertainty. Jiacheng Xu, Shrey Desai and Greg Durrett.

Findings

  • WikiLingua- A New Benchmark Dataset for Cross-Lingual Abstractive Summarization Faisal Ladhak, Esin Durmus, Claire Cardie, Kathleen McKeown
  • A Hierarchical Network for Abstractive Meeting Summarization with Cross-Domain Pretraining Chenguang Zhu, Ruochen Xu, Michael Zeng, Xuedong Huang
  • Conditional Neural Generation using Sub-Aspect Functions for Extractive News Summarization Zhengyuan Liu, Ke Shi, Nancy F. Chen
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