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Revisiting Graph Convolutional Network on Semi-Supervised Node
  Classification from an Optimization Perspective

Revisiting Graph Convolutional Network on Semi-Supervised Node Classification from an Optimization Perspective

24 September 2020
Hongwei Zhang
Tijin Yan
Zenjun Xie
Yuanqing Xia
Yuan Zhang
    GNN
ArXivPDFHTML

Papers citing "Revisiting Graph Convolutional Network on Semi-Supervised Node Classification from an Optimization Perspective"

7 / 7 papers shown
Title
Efficient Link Prediction via GNN Layers Induced by Negative Sampling
Efficient Link Prediction via GNN Layers Induced by Negative Sampling
Yuxin Wang
Xiannian Hu
Quan Gan
Xuanjing Huang
Xipeng Qiu
David Wipf
60
4
0
31 Dec 2024
HERTA: A High-Efficiency and Rigorous Training Algorithm for Unfolded
  Graph Neural Networks
HERTA: A High-Efficiency and Rigorous Training Algorithm for Unfolded Graph Neural Networks
Yongyi Yang
Jiaming Yang
Wei Hu
Michal Dereziñski
48
0
0
26 Mar 2024
Implicit vs Unfolded Graph Neural Networks
Implicit vs Unfolded Graph Neural Networks
Yongyi Yang
Tang Liu
Yangkun Wang
Zengfeng Huang
David Wipf
52
15
0
12 Nov 2021
Cold Brew: Distilling Graph Node Representations with Incomplete or
  Missing Neighborhoods
Cold Brew: Distilling Graph Node Representations with Incomplete or Missing Neighborhoods
Wenqing Zheng
Edward W. Huang
Nikhil S. Rao
S. Katariya
Zhangyang Wang
Karthik Subbian
32
62
0
08 Nov 2021
Bag of Tricks for Training Deeper Graph Neural Networks: A Comprehensive
  Benchmark Study
Bag of Tricks for Training Deeper Graph Neural Networks: A Comprehensive Benchmark Study
Tianlong Chen
Kaixiong Zhou
Keyu Duan
Wenqing Zheng
Peihao Wang
Xia Hu
Zhangyang Wang
AAML
GNN
27
61
0
24 Aug 2021
Graph Neural Networks Inspired by Classical Iterative Algorithms
Graph Neural Networks Inspired by Classical Iterative Algorithms
Yongyi Yang
T. Liu
Yangkun Wang
Jinjing Zhou
Quan Gan
Zhewei Wei
Zheng-Wei Zhang
Zengfeng Huang
David Wipf
39
83
0
10 Mar 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
279
1,944
0
09 Jun 2018
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