Graph Regression On Zinc Full

评估指标

Test MAE

评测结果

各个模型在此基准测试上的表现结果

模型名称
Test MAE
Paper TitleRepository
GIN0.068±0.004How Powerful are Graph Neural Networks?-
δ-2-LGNN0.045±0.006Weisfeiler and Leman go sparse: Towards scalable higher-order graph embeddings-
ESA + rings + NodeRWSE + EdgeRWSE0.0109±0.0002An end-to-end attention-based approach for learning on graphs-
TokenGT0.047±0.010Pure Transformers are Powerful Graph Learners-
δ-2-GNN0.042±0.003Weisfeiler and Leman go sparse: Towards scalable higher-order graph embeddings-
ESA + RWSE (Edge set attention, Random Walk Structural Encoding, tuned)0.0154±0.0001An end-to-end attention-based approach for learning on graphs-
GRIT0.023Graph Inductive Biases in Transformers without Message Passing-
GraphGPS0.024±0.007Recipe for a General, Powerful, Scalable Graph Transformer-
Graphormer0.036±0.002Do Transformers Really Perform Bad for Graph Representation?-
GCN0.152±0.023Semi-Supervised Classification with Graph Convolutional Networks-
ESA + RWSE (Edge set attention, Random Walk Structural Encoding)0.017±0.001An end-to-end attention-based approach for learning on graphs-
PNA0.057±0.007Principal Neighbourhood Aggregation for Graph Nets-
TIGT0.014Topology-Informed Graph Transformer-
GATv20.079±0.004How Attentive are Graph Attention Networks?-
GAT0.078±0.006Graph Attention Networks-
ESA + RWSE + CY2C (Edge set attention, Random Walk Structural Encoding, clique adjacency, tuned)0.0122±0.0004An end-to-end attention-based approach for learning on graphs-
SignNet0.024±0.003Sign and Basis Invariant Networks for Spectral Graph Representation Learning-
GraphSAGE0.126±0.003Inductive Representation Learning on Large Graphs-
ESA (Edge set attention, no positional encodings)0.027±0.001An end-to-end attention-based approach for learning on graphs-
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Graph Regression On Zinc Full | SOTA | HyperAI超神经