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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 110 of 29 papers

TitleStatusHype
GCNH: A Simple Method For Representation Learning On Heterophilous GraphsCode1
Beyond Low-frequency Information in Graph Convolutional NetworksCode1
Breaking the Limit of Graph Neural Networks by Improving the Assortativity of Graphs with Local Mixing PatternsCode1
BernNet: Learning Arbitrary Graph Spectral Filters via Bernstein ApproximationCode1
Clenshaw Graph Neural NetworksCode1
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
Beyond Homophily in Graph Neural Networks: Current Limitations and Effective DesignsCode1
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