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A Two-Stream AMR-enhanced Model for Document-level Event Argument
  Extraction

A Two-Stream AMR-enhanced Model for Document-level Event Argument Extraction

30 April 2022
Runxin Xu
Peiyi Wang
Tianyu Liu
Shuang Zeng
Baobao Chang
Zhifang Sui
ArXivPDFHTML

Papers citing "A Two-Stream AMR-enhanced Model for Document-level Event Argument Extraction"

16 / 16 papers shown
Title
Survey of Abstract Meaning Representation: Then, Now, Future
Survey of Abstract Meaning Representation: Then, Now, Future
Behrooz Mansouri
3DV
155
0
0
06 May 2025
Asking and Answering Questions to Extract Event-Argument Structures
Asking and Answering Questions to Extract Event-Argument Structures
Md Nayem Uddin
Enfa Rose George
Eduardo Blanco
Steven Corman
25
3
0
25 Apr 2024
Linear Cross-document Event Coreference Resolution with X-AMR
Linear Cross-document Event Coreference Resolution with X-AMR
Shafiuddin Rehan Ahmed
George Baker
Evi Judge
Michael Regan
Kristin Wright-Bettner
Martha Palmer
James H. Martin
34
3
0
25 Mar 2024
A Semantic Mention Graph Augmented Model for Document-Level Event
  Argument Extraction
A Semantic Mention Graph Augmented Model for Document-Level Event Argument Extraction
Jian Zhang
Chang-Qing Yang
Haiping Zhu
Qika Lin
Fangzhi Xu
Jun Liu
36
1
0
12 Mar 2024
Guiding AMR Parsing with Reverse Graph Linearization
Guiding AMR Parsing with Reverse Graph Linearization
Bofei Gao
Liang Chen
Peiyi Wang
Zhifang Sui
Baobao Chang
46
3
0
13 Oct 2023
Enhancing Document-level Event Argument Extraction with Contextual Clues
  and Role Relevance
Enhancing Document-level Event Argument Extraction with Contextual Clues and Role Relevance
Wanlong Liu
Shaohuan Cheng
DingYi Zeng
Hong Qu
45
25
0
08 Oct 2023
A Survey of Document-Level Information Extraction
A Survey of Document-Level Information Extraction
Hanwen Zheng
Sijia Wang
Lifu Huang
32
1
0
23 Sep 2023
Linguistic representations for fewer-shot relation extraction across
  domains
Linguistic representations for fewer-shot relation extraction across domains
Sireesh Gururaja
Ritam Dutt
Ting-gen Liao
Carolyn Rose
31
11
0
07 Jul 2023
The Devil is in the Details: On the Pitfalls of Event Extraction
  Evaluation
The Devil is in the Details: On the Pitfalls of Event Extraction Evaluation
Hao Peng
Xiaozhi Wang
Feng Yao
Kaisheng Zeng
Lei Hou
Juanzi Li
Zhiyuan Liu
Weixing Shen
32
18
0
12 Jun 2023
Revisiting Event Argument Extraction: Can EAE Models Learn Better When
  Being Aware of Event Co-occurrences?
Revisiting Event Argument Extraction: Can EAE Models Learn Better When Being Aware of Event Co-occurrences?
Yuxin He
Jing-Hao Hu
Buzhou Tang
25
30
0
01 Jun 2023
An AMR-based Link Prediction Approach for Document-level Event Argument
  Extraction
An AMR-based Link Prediction Approach for Document-level Event Argument Extraction
Yuqing Yang
Qipeng Guo
Xiangkun Hu
Yue Zhang
Xipeng Qiu
Zheng-Wei Zhang
110
26
0
30 May 2023
AMPERE: AMR-Aware Prefix for Generation-Based Event Argument Extraction
  Model
AMPERE: AMR-Aware Prefix for Generation-Based Event Argument Extraction Model
I-Hung Hsu
Zhiyu Xie
Kuan-Hao Huang
Premkumar Natarajan
Nanyun Peng
32
41
0
26 May 2023
DialogQAE: N-to-N Question Answer Pair Extraction from Customer Service
  Chatlog
DialogQAE: N-to-N Question Answer Pair Extraction from Customer Service Chatlog
Xin Zheng
Tianyu Liu
H. Meng
Xu Wang
Yu Jiang
Meng-Liang Rao
Binghuai Lin
Zhifang Sui
Yunbo Cao
35
2
0
14 Dec 2022
Few-Shot Document-Level Event Argument Extraction
Few-Shot Document-Level Event Argument Extraction
Xianjun Yang
Yujie Lu
Linda R. Petzold
19
16
0
06 Sep 2022
Transition-based Parsing with Stack-Transformers
Transition-based Parsing with Stack-Transformers
Ramón Fernández Astudillo
Miguel Ballesteros
Tahira Naseem
Austin Blodgett
Radu Florian
50
71
0
20 Oct 2020
Deep Graph Library: A Graph-Centric, Highly-Performant Package for Graph
  Neural Networks
Deep Graph Library: A Graph-Centric, Highly-Performant Package for Graph Neural Networks
Minjie Wang
Da Zheng
Zihao Ye
Quan Gan
Mufei Li
...
J. Zhao
Haotong Zhang
Alex Smola
Jinyang Li
Zheng-Wei Zhang
AI4CE
GNN
206
746
0
03 Sep 2019
1