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2201.08802
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Deconfounding to Explanation Evaluation in Graph Neural Networks
21 January 2022
Yingmin Wu
Xiang Wang
An Zhang
Xia Hu
Fuli Feng
Xiangnan He
Tat-Seng Chua
FAtt
CML
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Papers citing
"Deconfounding to Explanation Evaluation in Graph Neural Networks"
6 / 6 papers shown
Title
When Graph Neural Network Meets Causality: Opportunities, Methodologies and An Outlook
Wenzhao Jiang
Hao Liu
Hui Xiong
CML
AI4CE
28
2
0
19 Dec 2023
Predicting the Silent Majority on Graphs: Knowledge Transferable Graph Neural Network
Wendong Bi
Bingbing Xu
Xiaoqian Sun
Li Xu
Huawei Shen
Xueqi Cheng
20
16
0
02 Feb 2023
Counterfactual Zero-Shot and Open-Set Visual Recognition
Zhongqi Yue
Tan Wang
Hanwang Zhang
Qianru Sun
Xiansheng Hua
BDL
153
192
0
01 Mar 2021
Explainability in Graph Neural Networks: A Taxonomic Survey
Hao Yuan
Haiyang Yu
Shurui Gui
Shuiwang Ji
162
590
0
31 Dec 2020
Benchmarking Graph Neural Networks
Vijay Prakash Dwivedi
Chaitanya K. Joshi
Anh Tuan Luu
T. Laurent
Yoshua Bengio
Xavier Bresson
186
913
0
02 Mar 2020
Geometric deep learning on graphs and manifolds using mixture model CNNs
Federico Monti
Davide Boscaini
Jonathan Masci
Emanuele Rodolà
Jan Svoboda
M. Bronstein
GNN
234
1,811
0
25 Nov 2016
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