HyperAI

Node Classification On Citeseer

Metrics

Accuracy
Validation

Results

Performance results of various models on this benchmark

Model Name
Accuracy
Validation
Paper TitleRepository
MTGAE71.80%YESMulti-Task Graph Autoencoders
PPNP75.83%YESPredict then Propagate: Graph Neural Networks meet Personalized PageRank
GOCN71.8%-Robust Graph Data Learning via Latent Graph Convolutional Representation-
SNoRe66.6-SNoRe: Scalable Unsupervised Learning of Symbolic Node Representations-
SplineCNN79.20%-SplineCNN: Fast Geometric Deep Learning with Continuous B-Spline Kernels
Graph-MLP + SWA77.99 ± 1.57%-The Split Matters: Flat Minima Methods for Improving the Performance of GNNs
ACMII-Snowball-381.56 ± 1.15-Is Heterophily A Real Nightmare For Graph Neural Networks To Do Node Classification?-
LDS-GNN75.0-Learning Discrete Structures for Graph Neural Networks
alpha-LoNGAE71.60%-Learning to Make Predictions on Graphs with Autoencoders
GResNet(GCN)72.7%-GResNet: Graph Residual Network for Reviving Deep GNNs from Suspended Animation
APPNP70.0 ± 1.4-Fast Graph Representation Learning with PyTorch Geometric
ACM-Snowball-281.58 ± 1.23-Is Heterophily A Real Nightmare For Graph Neural Networks To Do Node Classification?-
PairE75.53-Graph Representation Learning Beyond Node and Homophily
PathNet--Beyond Homophily: Structure-aware Path Aggregation Graph Neural Network
GResNet(GAT)73.5%-GResNet: Graph Residual Network for Reviving Deep GNNs from Suspended Animation
CGT76.59±0.98-Mitigating Degree Biases in Message Passing Mechanism by Utilizing Community Structures
Graphite71.0 ± 0.07-Graphite: Iterative Generative Modeling of Graphs
SF-GCN73.4%-Structure fusion based on graph convolutional networks for semi-supervised classification-
hpGAT73.0%-hpGAT: High-order Proximity Informed Graph Attention Network-
AdaGCN76.22 ± 0.20-AdaGCN: Adaboosting Graph Convolutional Networks into Deep Models
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