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Contrastive Graph Neural Network Explanation

Contrastive Graph Neural Network Explanation

26 October 2020
Lukas Faber
A. K. Moghaddam
Roger Wattenhofer
ArXivPDFHTML

Papers citing "Contrastive Graph Neural Network Explanation"

9 / 9 papers shown
Title
Robust Ante-hoc Graph Explainer using Bilevel Optimization
Robust Ante-hoc Graph Explainer using Bilevel Optimization
Kha-Dinh Luong
Mert Kosan
A. Silva
Ambuj K. Singh
34
6
0
25 May 2023
Structural Explanations for Graph Neural Networks using HSIC
Structural Explanations for Graph Neural Networks using HSIC
Ayato Toyokuni
Makoto Yamada
19
1
0
04 Feb 2023
Evaluating Explainability for Graph Neural Networks
Evaluating Explainability for Graph Neural Networks
Chirag Agarwal
Owen Queen
Himabindu Lakkaraju
Marinka Zitnik
38
99
0
19 Aug 2022
Differentially Private Graph Classification with GNNs
Differentially Private Graph Classification with GNNs
Tamara T. Mueller
Johannes C. Paetzold
Chinmay Prabhakar
Dmitrii Usynin
Daniel Rueckert
Georgios Kaissis
42
18
0
05 Feb 2022
Deconfounding to Explanation Evaluation in Graph Neural Networks
Deconfounding to Explanation Evaluation in Graph Neural Networks
Yingmin Wu
Xiang Wang
An Zhang
Xia Hu
Fuli Feng
Xiangnan He
Tat-Seng Chua
FAtt
CML
17
14
0
21 Jan 2022
Self-learn to Explain Siamese Networks Robustly
Self-learn to Explain Siamese Networks Robustly
Chao Chen
Yifan Shen
Guixiang Ma
Xiangnan Kong
S. Rangarajan
Xi Zhang
Sihong Xie
38
5
0
15 Sep 2021
Probing GNN Explainers: A Rigorous Theoretical and Empirical Analysis of
  GNN Explanation Methods
Probing GNN Explainers: A Rigorous Theoretical and Empirical Analysis of GNN Explanation Methods
Chirag Agarwal
Marinka Zitnik
Himabindu Lakkaraju
19
51
0
16 Jun 2021
MEG: Generating Molecular Counterfactual Explanations for Deep Graph
  Networks
MEG: Generating Molecular Counterfactual Explanations for Deep Graph Networks
Danilo Numeroso
D. Bacciu
16
37
0
16 Apr 2021
Representation Learning on Graphs with Jumping Knowledge Networks
Representation Learning on Graphs with Jumping Knowledge Networks
Keyulu Xu
Chengtao Li
Yonglong Tian
Tomohiro Sonobe
Ken-ichi Kawarabayashi
Stefanie Jegelka
GNN
267
1,944
0
09 Jun 2018
1