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SOTA
ノード分類
Node Classification On Cora With Public Split
Node Classification On Cora With Public Split
評価指標
Accuracy
評価結果
このベンチマークにおける各モデルのパフォーマンス結果
Columns
モデル名
Accuracy
Paper Title
OGC
86.9%
From Cluster Assumption to Graph Convolution: Graph-based Semi-Supervised Learning Revisited
GCN-TV
86.3%
Re-Think and Re-Design Graph Neural Networks in Spaces of Continuous Graph Diffusion Functionals
GCNII
85.5%
Simple and Deep Graph Convolutional Networks
GRAND
85.4 ± 0.4
Graph Random Neural Network for Semi-Supervised Learning on Graphs
CPF-ind-APPNP
85.3%
Extract the Knowledge of Graph Neural Networks and Go Beyond it: An Effective Knowledge Distillation Framework
GCN
85.1 ± 0.7
Classic GNNs are Strong Baselines: Reassessing GNNs for Node Classification
AIR-GCN
84.7%
GraphAIR: Graph Representation Learning with Neighborhood Aggregation and Interaction
H-GCN
84.5%
Hierarchical Graph Convolutional Networks for Semi-supervised Node Classification
DAGNN (Ours)
84.4 ± 0.5
Towards Deeper Graph Neural Networks
G-APPNP
84.31%
Pre-train and Learn: Preserve Global Information for Graph Neural Networks
SuperGAT MX
84.3%
How to Find Your Friendly Neighborhood: Graph Attention Design with Self-Supervision
DSGCN
84.2%
Bridging the Gap Between Spectral and Spatial Domains in Graph Neural Networks
LDS-GNN
84.1%
Learning Discrete Structures for Graph Neural Networks
GraphMix
83.94 ± 0.57
GraphMix: Improved Training of GNNs for Semi-Supervised Learning
GraphMix (GCN)
83.94 ± 0.57
GraphMix: Improved Training of GNNs for Semi-Supervised Learning
GGCM
83.6%
From Cluster Assumption to Graph Convolution: Graph-based Semi-Supervised Learning Revisited
GCN+GAugO
83.6 ± 0.5%
Data Augmentation for Graph Neural Networks
Snowball (linear)
83.26%
Break the Ceiling: Stronger Multi-scale Deep Graph Convolutional Networks
GAT+PGN
83.26 ± 0.69%
The Split Matters: Flat Minima Methods for Improving the Performance of GNNs
Snowball (tanh)
83.19%
Break the Ceiling: Stronger Multi-scale Deep Graph Convolutional Networks
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Node Classification On Cora With Public Split | SOTA | HyperAI超神経