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SOTA
Graph Classification
Graph Classification On Dd
Graph Classification On Dd
Metrics
Accuracy
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy
Paper Title
Repository
1-NMFPool
76.0%
A Non-Negative Factorization approach to node pooling in Graph Convolutional Neural Networks
-
GraphStar
79.60%
Graph Star Net for Generalized Multi-Task Learning
DGCNN
79.37%
An End-to-End Deep Learning Architecture for Graph Classification
DGCNN
77.21%
DGCNN: Disordered Graph Convolutional Neural Network Based on the Gaussian Mixture Model
-
GCN
78.151±3.465
Semi-Supervised Classification with Graph Convolutional Networks
EigenGCN-3
78.6%
Graph Convolutional Networks with EigenPooling
NDP
72%
Hierarchical Representation Learning in Graph Neural Networks with Node Decimation Pooling
GATv2
75.966±2.191
How Attentive are Graph Attention Networks?
TokenGT
73.950±3.361
Pure Transformers are Powerful Graph Learners
GFN-light
78.62%
Are Powerful Graph Neural Nets Necessary? A Dissection on Graph Classification
DGK
73.50%
Deep Graph Kernels
-
PNA
78.992±4.407
Principal Neighbourhood Aggregation for Graph Nets
S2V (with 2 DiffPool)
82.07%
Hierarchical Graph Representation Learning with Differentiable Pooling
GAT
73.109±3.413
Graph Attention Networks
SEAL-SAGE
80.88%
Semi-Supervised Graph Classification: A Hierarchical Graph Perspective
TREE-G
76.2%
TREE-G: Decision Trees Contesting Graph Neural Networks
GMT
78.72%
Accurate Learning of Graph Representations with Graph Multiset Pooling
U2GNN (Unsupervised)
95.67%
Universal Graph Transformer Self-Attention Networks
LDP + distance
77.5%
A simple yet effective baseline for non-attributed graph classification
Graph-JEPA
78.64%
Graph-level Representation Learning with Joint-Embedding Predictive Architectures
0 of 52 row(s) selected.
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