HyperAI

Heterogeneous Node Classification On Dblp 1

Metrics

Macro-F1 (20% training data)
Macro-F1 (60% training data)
Macro-F1 (80% training data)
Micro-F1 (20% training data)
Micro-F1 (80% training data)

Results

Performance results of various models on this benchmark

Model Name
Macro-F1 (20% training data)
Macro-F1 (60% training data)
Macro-F1 (80% training data)
Micro-F1 (20% training data)
Micro-F1 (80% training data)
Paper TitleRepository
HAN (sem)92.03%93.31%92.53%92.99%93.29%Heterogeneous Graph Attention Network
GAT90.97%91.84%91.73%91.96%92.55%Heterogeneous Graph Attention Network
NLAH (ppr)-95.95%---Non-local Attention Learning on Large Heterogeneous Information Networks
GCN90.79%92.62%92.38%91.71%93.09%Heterogeneous Graph Attention Network
HDGI-C90.94%-91.53%91.75%92.26%Heterogeneous Deep Graph Infomax
HAN92.24%93.70%93.08%93.11%93.99%Heterogeneous Graph Attention Network
HDGI-A89.88%-91.06%90.62%91.92%Heterogeneous Deep Graph Infomax
NLAH (ppmi)-95.91%---Non-local Attention Learning on Large Heterogeneous Information Networks
DeepWalk77.43%85.27%84.81%79.37%86.26%Heterogeneous Graph Attention Network
NLAH (2ndprox)-96.48%---Non-local Attention Learning on Large Heterogeneous Information Networks
HAN (nd)91.17%92.69%91.80%92.05%92.69%Heterogeneous Graph Attention Network
metapath2vec90.16%92.48%91.89%91.53%92.80%Heterogeneous Graph Attention Network
HERec91.68%93.70%92.34%92.69%93.27%Heterogeneous Graph Attention Network
ESim91.64%93.39%93.44%92.73%92.53%Heterogeneous Graph Attention Network
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