SOTAVerified

Node Classification

Node Classification is a machine learning task in graph-based data analysis, where the goal is to assign labels to nodes in a graph based on the properties of nodes and the relationships between them.

Node Classification models aim to predict non-existing node properties (known as the target property) based on other node properties. Typical models used for node classification consists of a large family of graph neural networks. Model performance can be measured using benchmark datasets like Cora, Citeseer, and Pubmed, among others, typically using Accuracy and F1.

( Image credit: Fast Graph Representation Learning With PyTorch Geometric )

Papers

Showing 701750 of 1860 papers

TitleStatusHype
Generative-Contrastive Heterogeneous Graph Neural NetworkCode0
Cooperative Meta-Learning with Gradient AugmentationCode0
Label-Wise Graph Convolutional Network for Heterophilic GraphsCode0
Attributed Network Embedding for Incomplete Attributed NetworksCode0
L2G2G: a Scalable Local-to-Global Network Embedding with Graph AutoencodersCode0
Linear Opinion Pooling for Uncertainty Quantification on GraphsCode0
L^2GC:Lorentzian Linear Graph Convolutional Networks for Node ClassificationCode0
Convolutional Neural Networks on Graphs with Fast Localized Spectral FilteringCode0
Dimensionwise Separable 2-D Graph Convolution for Unsupervised and Semi-Supervised Learning on GraphsCode0
Generalized Learning of Coefficients in Spectral Graph Convolutional NetworksCode0
Graph as a feature: improving node classification with non-neural graph-aware logistic regressionCode0
GraphAttacker: A General Multi-Task GraphAttack FrameworkCode0
Convolutional Networks on Graphs for Learning Molecular FingerprintsCode0
Graph Attention for Heterogeneous Graphs with Positional EncodingCode0
Resurrecting Label Propagation for Graphs with Heterophily and Label NoiseCode0
Customizing Graph Neural Networks using Path ReweightingCode0
Decoupled Variational Embedding for Signed Directed NetworksCode0
LASE: Learned Adjacency Spectral EmbeddingsCode0
Generalized Laplacian Regularized Framelet Graph Neural NetworksCode0
It Takes a Graph to Know a Graph: Rewiring for Homophily with a Reference GraphCode0
Contrast Similarity-Aware Dual-Pathway Mamba for Multivariate Time Series Node ClassificationCode0
Contrastive Meta-Learning for Few-shot Node ClassificationCode0
D-HYPR: Harnessing Neighborhood Modeling and Asymmetry Preservation for Digraph Representation LearningCode0
Contrastive Learning Meets Pseudo-label-assisted Mixup Augmentation: A Comprehensive Graph Representation Framework from Local to GlobalCode0
Investigating the Interplay between Features and Structures in Graph LearningCode0
Deepened Graph Auto-Encoders Help Stabilize and Enhance Link PredictionCode0
Kernel Node EmbeddingsCode0
Dynamic Embedding on Textual Networks via a Gaussian ProcessCode0
Gaussian Embedding of Large-scale Attributed GraphsCode0
Graph Coarsening via Convolution Matching for Scalable Graph Neural Network TrainingCode0
Information Extraction from Visually Rich Documents Using Directed Weighted Graph Neural NetworkCode0
Infinite-Horizon Graph Filters: Leveraging Power Series to Enhance Sparse Information AggregationCode0
Integrating Structural and Semantic Signals in Text-Attributed Graphs with BiGTexCode0
Attention-Driven Metapath Encoding in Heterogeneous GraphsCode0
Inductive Representation Learning in Temporal Networks via Mining Neighborhood and Community InfluencesCode0
Continuous Graph Neural NetworksCode0
Inferring from References with Differences for Semi-Supervised Node Classification on GraphsCode0
IntraMix: Intra-Class Mixup Generation for Accurate Labels and NeighborsCode0
k-hop Graph Neural NetworksCode0
Layer-Dependent Importance Sampling for Training Deep and Large Graph Convolutional NetworksCode0
LIME: Low-Cost and Incremental Learning for Dynamic Heterogeneous Information NetworksCode0
Mixture of Experts Meets Decoupled Message Passing: Towards General and Adaptive Node ClassificationCode0
Improving Graph Neural Networks by Learning Continuous Edge DirectionsCode0
Calibrating and Improving Graph Contrastive LearningCode0
Graph Convolutional Neural Networks via ScatteringCode0
Graph Convolutional Neural Networks with Diverse Negative Samples via Decomposed Determinant Point ProcessesCode0
Improving Your Graph Neural Networks: A High-Frequency BoosterCode0
GaAN: Gated Attention Networks for Learning on Large and Spatiotemporal GraphsCode0
AGMixup: Adaptive Graph Mixup for Semi-supervised Node ClassificationCode0
Improving Expressive Power of Spectral Graph Neural Networks with Eigenvalue CorrectionCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1NodeNetAccuracy80.09Unverified
2SplineCNNAccuracy79.2Unverified
3PathNetAccuracy (%)77.98Unverified
43ferenceAccuracy76.33Unverified
5MMAAccuracy76.3Unverified
6PPNPAccuracy75.83Unverified
7CoLinkDistAccuracy75.79Unverified
8CoLinkDistMLPAccuracy75.77Unverified
9APPNPAccuracy75.73Unverified
10CleoraAccuracy75.7Unverified
#ModelMetricClaimedVerifiedStatus
1NodeNetAccuracy90.21Unverified
2CoLinkDistAccuracy89.58Unverified
3CoLinkDistMLPAccuracy89.53Unverified
4PathNetAccuracy (%)88.92Unverified
53ferenceAccuracy88.9Unverified
6SplineCNNAccuracy88.88Unverified
7LinkDistAccuracy88.86Unverified
8LinkDistMLPAccuracy88.79Unverified
9PairEF188.57Unverified
10GCN + MixupAccuracy87.9Unverified
#ModelMetricClaimedVerifiedStatus
1LinkDistAccuracy88.24Unverified
2CoLinkDistAccuracy87.89Unverified
33ferenceAccuracy87.78Unverified
4LinkDistMLPAccuracy87.58Unverified
5CoLinkDistMLPAccuracy87.54Unverified
6CleoraAccuracy86.8Unverified
7NodeNetAccuracy86.8Unverified
8MMAAccuracy85.8Unverified
9GResNet(GAT)Accuracy85.5Unverified
10TransGNN1:1 Accuracy85.1Unverified
#ModelMetricClaimedVerifiedStatus
1OGCAccuracy77.5Unverified
2LDS-GNNAccuracy75Unverified
3CPF-tra-APPNPAccuracy74.6Unverified
4G3NNAccuracy74.5Unverified
5GEMAccuracy74.2Unverified
6GGCMAccuracy74.2Unverified
7Truncated KrylovAccuracy73.86Unverified
8SSGCAccuracy73.6Unverified
9OKDEEMAccuracy73.53Unverified
10GCNIIAccuracy73.4Unverified
#ModelMetricClaimedVerifiedStatus
1OGCAccuracy83.4Unverified
2CPF-tra-GCNIIAccuracy83.2Unverified
3DSGCNAccuracy81.9Unverified
4Truncated KrylovAccuracy81.7Unverified
5SuperGAT MXAccuracy81.7Unverified
6G-APPNPAccuracy80.95Unverified
7GGCMAccuracy80.8Unverified
8GCN(predicted-targets)Accuracy80.42Unverified
9SSGCAccuracy80.4Unverified
10GCNIIAccuracy80.2Unverified
#ModelMetricClaimedVerifiedStatus
1OGCAccuracy86.9Unverified
2GCN-TVAccuracy86.3Unverified
3GCNIIAccuracy85.5Unverified
4CPF-ind-APPNPAccuracy85.3Unverified
5AIR-GCNAccuracy84.7Unverified
6H-GCNAccuracy84.5Unverified
7G-APPNPAccuracy84.31Unverified
8SuperGAT MXAccuracy84.3Unverified
9DSGCNAccuracy84.2Unverified
10LDS-GNNAccuracy84.1Unverified