by Pengfei Liu, Yiran Chen, Jinlan Fu, Hiroaki Hayashi, Danqing Wang and other contributors.
An exhaustive paper list for Text Summarization, covering papers from eight top conferences (ACL / EMNLP / NAACL / ICML / ICLR / AAAI / IJCAI / NeurIPS) in the last eight years (2013-2020).
- Find the top-cited summarization papers! [The latest update on: 02.25/2020]
- Track the latest summarization papers!
- Find the milestone summarization papers for beginners.
- Search papers by research concepts or your interested keywords.
We first define the typology of essential concepts for the summarization task. We then plot the number of papers for each concept below.
denotes the number of papers before 2019.
denotes the number of papers since 2019.
Concepts in red suggest HOT topics, and we can observe:
- Task: Scientific paper-based summarization has gain growing interests.
- Data: More new datasets are constructed.
- Architecture: Pretrained models and graph neural networks prevail.
- Evaluation: Evaluation of the generated summary's factuality attracts recent attention.
pre-X
: summarizer with unsupervised pretrained models.task-sci
: scientifc paper-based summarization.eval-factuality
: factuality evaluation on generated summaries.arch-gnn
: graph neural network-based summarizers.data-new
: more new datasets are constructed.
- 10 must-read papers for neural extractive summarization
- 10 must-read papers for neural abstractive summarization
- Top 10 most-cited summarization papers since 2014
4. Mainstream Dataset List 🔽
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- Update the file
summ_concept.md
and send us aPull request
. - Or you could open an
Issue
.
- Update the file
-
- Add your paper (If possible, with annotated concepts) into
paper_with_concept
and send us aPull request
. - Or you could open an
Issue
.
- Add your paper (If possible, with annotated concepts) into
-
- Add your dataset (If possible, with a brief description) into
paper_with_dataset
and send us aPull request
. - Or you could open an
Issue
.
- Add your dataset (If possible, with a brief description) into
- Concepts in Neural Networks for NLP
- Named Entity Recognition Paper List
- Historiography of Text Summarization
Hopefully, you will see our version-2.0 covering papers from 1980 to 2020.
- Thanks Graham Neubig's idea on the "concept" and other comments.