Graph Clustering On Pubmed
Metrics
ACC
NMI
Results
Performance results of various models on this benchmark
Model Name | ACC | NMI | Paper Title | Repository |
---|---|---|---|---|
RWR-GAE | 72.6 | 35.5 | RWR-GAE: Random Walk Regularization for Graph Auto Encoders | |
VGAE | 65.48 | - | Variational Graph Auto-Encoders | |
DAEGC+GSCAN† | - | 31.7 | GSCAN: Graph Stability Clustering for Applications With Noise Using Edge-Aware Excess-of-Mass | |
RWR-VGAE | 73.6 | 34.6 | RWR-GAE: Random Walk Regularization for Graph Auto Encoders | |
R-GMM-VGAE | 74.0 | 33.4 | Rethinking Graph Auto-Encoder Models for Attributed Graph Clustering | |
R-DGAE | 71.4 | 34.4 | Rethinking Graph Auto-Encoder Models for Attributed Graph Clustering | |
AGC | 69.78 | 31.59 | Attributed Graph Clustering via Adaptive Graph Convolution |
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