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Structure-Feature based Graph Self-adaptive Pooling

Structure-Feature based Graph Self-adaptive Pooling

30 January 2020
Liang Zhang
Xudong Wang
Hongsheng Li
Guangming Zhu
Peiyi Shen
P. Li
Xiaoyuan Lu
Syed Afaq Ali Shah
Bennamoun
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Papers citing "Structure-Feature based Graph Self-adaptive Pooling"

17 / 17 papers shown
Title
Combining GCN Structural Learning with LLM Chemical Knowledge for Enhanced Virtual Screening
Combining GCN Structural Learning with LLM Chemical Knowledge for Enhanced Virtual Screening
Radia Berreziga
Mohammed Brahimi
Khairedine Kraim
Hamid Azzoune
122
0
0
24 Apr 2025
Edge-Based Graph Component Pooling
Edge-Based Graph Component Pooling
T. Snelleman
B. M. Renting
H. H. Hoos
J. N. V. Rijn
GNN
21
2
0
18 Sep 2024
A Comprehensive Graph Pooling Benchmark: Effectiveness, Robustness and
  Generalizability
A Comprehensive Graph Pooling Benchmark: Effectiveness, Robustness and Generalizability
Pengyun Wang
Junyu Luo
Yanxin Shen
Siyu Heng
Xiao Luo
44
1
0
13 Jun 2024
Dual Encoder: Exploiting the Potential of Syntactic and Semantic for
  Aspect Sentiment Triplet Extraction
Dual Encoder: Exploiting the Potential of Syntactic and Semantic for Aspect Sentiment Triplet Extraction
Xiaowei Zhao
Yong Zhou
Xiujuan Xu
19
3
0
23 Feb 2024
Graph Parsing Networks
Graph Parsing Networks
Yunchong Song
Siyuan Huang
Xinbing Wang
Cheng Zhou
Zhouhan Lin
GNN
32
3
0
22 Feb 2024
Subgraph-level Universal Prompt Tuning
Subgraph-level Universal Prompt Tuning
Junhyun Lee
Wooseong Yang
Jaewoo Kang
VLM
23
5
0
16 Feb 2024
Careful Selection and Thoughtful Discarding: Graph Explicit Pooling
  Utilizing Discarded Nodes
Careful Selection and Thoughtful Discarding: Graph Explicit Pooling Utilizing Discarded Nodes
Chuang Liu
Wenhang Yu
Kuang Gao
Xueqi Ma
Yibing Zhan
Jia Wu
Bo Du
Wenbin Hu
19
0
0
21 Nov 2023
On Exploring Node-feature and Graph-structure Diversities for Node Drop
  Graph Pooling
On Exploring Node-feature and Graph-structure Diversities for Node Drop Graph Pooling
Chuang Liu
Yibing Zhan
Baosheng Yu
Liu Liu
Bo Du
Wenbin Hu
Tongliang Liu
22
11
0
22 Jun 2023
State of the Art and Potentialities of Graph-level Learning
State of the Art and Potentialities of Graph-level Learning
Zhenyu Yang
Ge Zhang
Jia Wu
Jian Yang
Quan.Z Sheng
...
Charu C. Aggarwal
Hao Peng
Wenbin Hu
Edwin R. Hancock
Pietro Lio'
GNN
AI4CE
35
10
0
14 Jan 2023
SPGP: Structure Prototype Guided Graph Pooling
SPGP: Structure Prototype Guided Graph Pooling
Sangseon Lee
Dohoon Lee
Yinhua Piao
Sun Kim
34
1
0
16 Sep 2022
Hierarchical Graph Pooling is an Effective Citywide Traffic Condition
  Prediction Model
Hierarchical Graph Pooling is an Effective Citywide Traffic Condition Prediction Model
Shilin Pu
Liang Chu
Zhuoran Hou
Jincheng Hu
Yanjun Huang
Yuanjian Zhang
217
0
0
08 Sep 2022
Generalizing Downsampling from Regular Data to Graphs
Generalizing Downsampling from Regular Data to Graphs
D. Bacciu
A. Conte
Francesco Landolfi
45
8
0
06 Aug 2022
Comprehensive Graph Gradual Pruning for Sparse Training in Graph Neural
  Networks
Comprehensive Graph Gradual Pruning for Sparse Training in Graph Neural Networks
Chuang Liu
Xueqi Ma
Yinbing Zhan
Liang Ding
Dapeng Tao
Bo Du
Wenbin Hu
Danilo P. Mandic
32
28
0
18 Jul 2022
Tackling Provably Hard Representative Selection via Graph Neural
  Networks
Tackling Provably Hard Representative Selection via Graph Neural Networks
Seyed Mehran Kazemi
Anton Tsitsulin
Hossein Esfandiari
M. Bateni
Deepak Ramachandran
Bryan Perozzi
Vahab Mirrokni
24
2
0
20 May 2022
Graph Pooling for Graph Neural Networks: Progress, Challenges, and
  Opportunities
Graph Pooling for Graph Neural Networks: Progress, Challenges, and Opportunities
Chuang Liu
Yibing Zhan
Jia Wu
Chang Li
Bo Du
Wenbin Hu
Tongliang Liu
Dacheng Tao
GNN
AI4CE
24
79
0
15 Apr 2022
Semi-Supervised Deep Learning for Multiplex Networks
Semi-Supervised Deep Learning for Multiplex Networks
Anasua Mitra
Priyesh Vijayan
Ranbir Sanasam
D. Goswami
S. Parthasarathy
Balaraman Ravindran
GNN
27
18
0
05 Oct 2021
Graph Neural Networks: Methods, Applications, and Opportunities
Graph Neural Networks: Methods, Applications, and Opportunities
Lilapati Waikhom
Ripon Patgiri
GNN
24
42
0
24 Aug 2021
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