Node Classification On Penn94

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

モデル名
Accuracy
Paper TitleRepository
GPRGCN81.38 ± 0.16Adaptive Universal Generalized PageRank Graph Neural Network-
GATJK80.69 ± 0.36New Benchmarks for Learning on Non-Homophilous Graphs-
GCNII82.92 ± 0.59Simple and Deep Graph Convolutional Networks-
L Prop 2-hop74.13 ± 0.46New Benchmarks for Learning on Non-Homophilous Graphs-
GNNMoE(GCN-like P)85.11±0.39Mixture of Experts Meets Decoupled Message Passing: Towards General and Adaptive Node Classification-
DJ-GNN84.84±0.34Diffusion-Jump GNNs: Homophiliation via Learnable Metric Filters-
C&S 2-hop78.40 ± 3.12Combining Label Propagation and Simple Models Out-performs Graph Neural Networks-
GCNJK81.63 ± 0.54New Benchmarks for Learning on Non-Homophilous Graphs-
C&S 1-hop 74.28 ± 1.19Combining Label Propagation and Simple Models Out-performs Graph Neural Networks-
L Prop 1-hop63.21 ± 0.39New Benchmarks for Learning on Non-Homophilous Graphs-
SGC 2-hop76.09 ± 0.45Simplifying Graph Convolutional Networks-
GloGNN85.57 ± 0.35Finding Global Homophily in Graph Neural Networks When Meeting Heterophily-
SGC 1-hop66.79 ± 0.27Simplifying Graph Convolutional Networks-
LINK 80.79 ± 0.49New Benchmarks for Learning on Non-Homophilous Graphs-
MixHop83.47 ± 0.71MixHop: Higher-Order Graph Convolutional Architectures via Sparsified Neighborhood Mixing-
H2GCN81.31 ± 0.60Beyond Homophily in Graph Neural Networks: Current Limitations and Effective Designs-
MLP73.61 ± 0.40New Benchmarks for Learning on Non-Homophilous Graphs-
NCGCN84.74 ± 0.28Clarify Confused Nodes via Separated Learning-
ACM-GCN+85.05 ± 0.19Revisiting Heterophily For Graph Neural Networks-
ACMII-GCN+84.95 ± 0.43Revisiting Heterophily For Graph Neural Networks-
0 of 32 row(s) selected.
Node Classification On Penn94 | SOTA | HyperAI超神経