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End-to-End Answer Chunk Extraction and Ranking for Reading Comprehension

End-to-End Answer Chunk Extraction and Ranking for Reading Comprehension

31 October 2016
Yang Yu
Wei Zhang
K. Hasan
Mo Yu
Bing Xiang
Bowen Zhou
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Papers citing "End-to-End Answer Chunk Extraction and Ranking for Reading Comprehension"

15 / 15 papers shown
Title
Universal Model in Online Customer Service
Universal Model in Online Customer Service
S. Pi
Cheng-Ping Hsieh
Qun Liu
Yuying Zhu
33
4
0
24 Feb 2024
Improving Question Answering Performance Using Knowledge Distillation
  and Active Learning
Improving Question Answering Performance Using Knowledge Distillation and Active Learning
Yasaman Boreshban
Seyed Morteza Mirbostani
Gholamreza Ghassem-Sani
Seyed Abolghasem Mirroshandel
Shahin Amiriparian
34
15
0
26 Sep 2021
A Survey on Machine Reading Comprehension Systems
A Survey on Machine Reading Comprehension Systems
Razieh Baradaran
Razieh Ghiasi
Hossein Amirkhani
FaML
18
85
0
06 Jan 2020
A Unified Query-based Generative Model for Question Generation and
  Question Answering
A Unified Query-based Generative Model for Question Generation and Question Answering
Linfeng Song
Zhiguo Wang
Wael Hamza
31
48
0
04 Sep 2017
R$^3$: Reinforced Reader-Ranker for Open-Domain Question Answering
R3^33: Reinforced Reader-Ranker for Open-Domain Question Answering
Shuohang Wang
Mo Yu
Xiaoxiao Guo
Zhiguo Wang
Tim Klinger
Wei Zhang
Shiyu Chang
Gerald Tesauro
Bowen Zhou
Jing Jiang
RALM
29
64
0
31 Aug 2017
Adversarial Examples for Evaluating Reading Comprehension Systems
Adversarial Examples for Evaluating Reading Comprehension Systems
Robin Jia
Percy Liang
AAML
ELM
160
1,585
0
23 Jul 2017
S-Net: From Answer Extraction to Answer Generation for Machine Reading
  Comprehension
S-Net: From Answer Extraction to Answer Generation for Machine Reading Comprehension
Chuanqi Tan
Furu Wei
Nan Yang
Bowen Du
Weifeng Lv
M. Zhou
RALM
28
92
0
15 Jun 2017
Ruminating Reader: Reasoning with Gated Multi-Hop Attention
Ruminating Reader: Reasoning with Gated Multi-Hop Attention
Yichen Gong
Samuel R. Bowman
35
46
0
24 Apr 2017
Exploring Question Understanding and Adaptation in Neural-Network-Based
  Question Answering
Exploring Question Understanding and Adaptation in Neural-Network-Based Question Answering
Junbei Zhang
Xiao-Dan Zhu
Qian Chen
Lirong Dai
Si Wei
Hui Jiang
22
54
0
14 Mar 2017
A Comparative Study of Word Embeddings for Reading Comprehension
A Comparative Study of Word Embeddings for Reading Comprehension
Bhuwan Dhingra
Hanxiao Liu
Ruslan Salakhutdinov
William W. Cohen
28
40
0
02 Mar 2017
Structural Embedding of Syntactic Trees for Machine Comprehension
Structural Embedding of Syntactic Trees for Machine Comprehension
R. Liu
Junjie Hu
Wei Wei
Zi Yang
Eric Nyberg
NAI
26
49
0
02 Mar 2017
Multi-Perspective Context Matching for Machine Comprehension
Multi-Perspective Context Matching for Machine Comprehension
Zhiguo Wang
Haitao Mi
Wael Hamza
Radu Florian
RALM
28
159
0
13 Dec 2016
Words or Characters? Fine-grained Gating for Reading Comprehension
Words or Characters? Fine-grained Gating for Reading Comprehension
Zhilin Yang
Bhuwan Dhingra
Ye Yuan
Junjie Hu
William W. Cohen
Ruslan Salakhutdinov
AI4CE
27
100
0
06 Nov 2016
Machine Comprehension Using Match-LSTM and Answer Pointer
Machine Comprehension Using Match-LSTM and Answer Pointer
Shuohang Wang
Jing Jiang
17
594
0
29 Aug 2016
Separating Answers from Queries for Neural Reading Comprehension
Separating Answers from Queries for Neural Reading Comprehension
Dirk Weissenborn
GNN
32
21
0
12 Jul 2016
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