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Node Classification on Non-Homophilic (Heterophilic) Graphs

There exists a non-trivial set of graphs where graph-aware models underperform their corresponding graph-agnostic models, e.g. SGC and GCN underperform MLP with 1 layer and 2 layers. Although still controversial, people believe the performance degradation results from heterophily, i.e. there exist much more inter-class edges than inner-class edges. This task aims to evaluate models designed for non-homophilic (heterophilic) datasets.

Papers

Showing 1120 of 29 papers

TitleStatusHype
Combining Label Propagation and Simple Models Out-performs Graph Neural NetworksCode1
Deformable Graph Convolutional NetworksCode1
Edge Directionality Improves Learning on Heterophilic GraphsCode1
Finding Global Homophily in Graph Neural Networks When Meeting HeterophilyCode1
GCNH: A Simple Method For Representation Learning On Heterophilous GraphsCode1
Beyond Homophily in Graph Neural Networks: Current Limitations and Effective DesignsCode1
Geom-GCN: Geometric Graph Convolutional NetworksCode1
Graph Attention NetworksCode1
Graph Neural Networks with Learnable and Optimal Polynomial BasesCode1
Inductive Representation Learning on Large GraphsCode1
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