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Recurrent Interaction Network for Jointly Extracting Entities and
  Classifying Relations
v1v2 (latest)

Recurrent Interaction Network for Jointly Extracting Entities and Classifying Relations

Conference on Empirical Methods in Natural Language Processing (EMNLP), 2020
1 May 2020
Kai Sun
Richong Zhang
Samuel Mensah
Yongyi Mao
Xudong Liu
ArXiv (abs)PDFHTML

Papers citing "Recurrent Interaction Network for Jointly Extracting Entities and Classifying Relations"

10 / 10 papers shown
Title
A systematic review of relation extraction task since the emergence of Transformers
A systematic review of relation extraction task since the emergence of Transformers
Ringwald Celian
Gandon
Fabien
Faron Catherine
Michel Franck
Abi Akl Hanna
166
0
0
05 Nov 2025
A Decoupling and Aggregating Framework for Joint Extraction of Entities
  and Relations
A Decoupling and Aggregating Framework for Joint Extraction of Entities and RelationsIEEE Access (IEEE Access), 2024
Yao Wang
Xin Liu
Weikun Kong
Hai-tao Yu
Teeradaj Racharak
Kyoung-Sook Kim
Le-Minh Nguyen
192
1
0
14 May 2024
Anaphor Assisted Document-Level Relation Extraction
Anaphor Assisted Document-Level Relation ExtractionConference on Empirical Methods in Natural Language Processing (EMNLP), 2023
Chonggang Lu
Richong Zhang
Kai Sun
Jaein Kim
Cunwang Zhang
Yongyi Mao
168
15
0
28 Oct 2023
BitCoin: Bidirectional Tagging and Supervised Contrastive Learning based
  Joint Relational Triple Extraction Framework
BitCoin: Bidirectional Tagging and Supervised Contrastive Learning based Joint Relational Triple Extraction Framework
Luyao He
Zhongbao Zhang
Sen Su
Yuxin Chen
151
1
0
21 Sep 2023
A Comprehensive Survey on Relation Extraction: Recent Advances and New
  Frontiers
A Comprehensive Survey on Relation Extraction: Recent Advances and New FrontiersACM Computing Surveys (ACM Comput. Surv.), 2023
Xiaoyan Zhao
Yang Deng
Min Yang
Lingzhi Wang
Rui Zhang
Hong Cheng
W. Lam
Ying Shen
Ruifeng Xu
KELM
253
89
0
03 Jun 2023
DICE: Data-Efficient Clinical Event Extraction with Generative Models
DICE: Data-Efficient Clinical Event Extraction with Generative ModelsAnnual Meeting of the Association for Computational Linguistics (ACL), 2022
Mingyu Derek Ma
Alex S. Taylor
Wei Wang
Nanyun Peng
MedIm
191
32
0
16 Aug 2022
A Simple but Effective Bidirectional Framework for Relational Triple
  Extraction
A Simple but Effective Bidirectional Framework for Relational Triple Extraction
Feiliang Ren
Longhui Zhang
Xiaofeng Zhao
Shujuan Yin
Shilei Liu
Bochao Li
234
66
0
09 Dec 2021
A Novel Global Feature-Oriented Relational Triple Extraction Model based
  on Table Filling
A Novel Global Feature-Oriented Relational Triple Extraction Model based on Table Filling
Feiliang Ren
Longhui Zhang
Shujuan Yin
Xiaofeng Zhao
Shilei Liu
Bochao Li
Yaduo Liu
196
84
0
14 Sep 2021
A Conditional Cascade Model for Relational Triple Extraction
A Conditional Cascade Model for Relational Triple Extraction
Feiliang Ren
Longhui Zhang
Shujuan Yin
Xiaofeng Zhao
Shilei Liu
Bochao Li
99
8
0
20 Aug 2021
Deep Neural Approaches to Relation Triplets Extraction: A Comprehensive
  Survey
Deep Neural Approaches to Relation Triplets Extraction: A Comprehensive SurveyCognitive Computation (Cogn Comput), 2021
Tapas Nayak
Navonil Majumder
Pawan Goyal
Soujanya Poria
ViT
209
58
0
31 Mar 2021
1