HyperAI

Graph Classification On Dd

Metriken

Accuracy

Ergebnisse

Leistungsergebnisse verschiedener Modelle zu diesem Benchmark

Vergleichstabelle
ModellnameAccuracy
a-non-negative-factorization-approach-to-node76.0%
graph-star-net-for-generalized-multi-task-179.60%
an-end-to-end-deep-learning-architecture-for79.37%
dgcnn-disordered-graph-convolutional-neural77.21%
semi-supervised-classification-with-graph78.151±3.465
graph-convolutional-networks-with78.6%
hierarchical-representation-learning-in-graph72%
how-attentive-are-graph-attention-networks75.966±2.191
pure-transformers-are-powerful-graph-learners73.950±3.361
dissecting-graph-neural-networks-on-graph78.62%
deep-graph-kernels73.50%
principal-neighbourhood-aggregation-for-graph78.992±4.407
hierarchical-graph-representation-learning82.07%
graph-attention-networks73.109±3.413
semi-supervised-graph-classification-a80.88%
graph-trees-with-attention76.2%
accurate-learning-of-graph-representations-178.72%
unsupervised-universal-self-attention-network95.67%
a-simple-yet-effective-baseline-for-non77.5%
graph-level-representation-learning-with78.64%
wasserstein-embedding-for-graph-learning78.6%
19091008682.40%
hierarchical-graph-representation-learning80.64%
maximum-entropy-weighted-independent-set84.33%
self-attention-graph-pooling76.45%
graph-representation-learning-via-hard-and81.71%
masked-attention-is-all-you-need-for-graphs83.529±1.743
unsupervised-universal-self-attention-network80.23%
asap-adaptive-structure-aware-pooling-for76.87
a-fair-comparison-of-graph-neural-networks-176.6%
an-end-to-end-deep-learning-architecture-for78.72%
capsule-graph-neural-network75.38%
wasserstein-weisfeiler-lehman-graph-kernels79.69%
graph-capsule-convolutional-neural-networks77.62%
hierarchical-graph-pooling-with-structure80.96%
self-attention-graph-pooling76.19%
understanding-attention-in-graph-neural78.36%
learning-convolutional-neural-networks-for76.27%
anonymous-walk-embeddings71.51%
graph-u-nets82.43%
dynamic-edge-conditioned-filters-in74.1%
how-powerful-are-graph-neural-networks77.311±2.223
a-simple-yet-effective-baseline-for-non75.5%
learning-metrics-for-persistence-based-282.0%
dropgnn-random-dropouts-increase-the78.151±3.711
relation-order-histograms-as-a-network80.45%
propagation-kernels-efficient-graph-kernels78.8%
capsule-neural-networks-for-graph74.86%
a-simple-baseline-algorithm-for-graph24.6%
dissecting-graph-neural-networks-on-graph78.78%
a-novel-higher-order-weisfeiler-lehman-graph75.4
ddgk-learning-graph-representations-for-deep83.14%