Graph Hopfield Networks: Energy-Based Node Classification with Associative Memory
About
We introduce Graph Hopfield Networks, whose energy function couples associative memory retrieval with graph Laplacian smoothing for node classification. Gradient descent on this joint energy yields an iterative update interleaving Hopfield retrieval with Laplacian propagation. Memory retrieval provides regime-dependent benefits: up to 2.0~pp on sparse citation networks and up to 5 pp additional robustness under feature masking; the iterative energy-descent architecture itself is a strong inductive bias, with all variants (including the memory-disabled NoMem ablation) outperforming standard baselines on Amazon co-purchase graphs. Tuning enables graph sharpening for heterophilous benchmarks without architectural changes.
Abinav Rao, Alex Wa, Rishi Athavale• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Node Classification | Texas heterophilic (test) | Accuracy81.4 | 23 | |
| Node Classification | Actor heterophilic (test) | Accuracy38 | 22 | |
| Node Classification | Cora Planetoid public split | Accuracy82.3 | 19 | |
| Node Classification | PubMed Planetoid public | Accuracy78.1 | 18 | |
| Node Classification | Wisconsin heterophilous (official) | Accuracy82.5 | 11 | |
| Node Classification | Cornell heterophilous (official) | Accuracy78.9 | 11 | |
| Node Classification | Amazon Photo (Clean) | Accuracy (%)94.4 | 10 | |
| Node Classification | Amazon Photo (50% Edge drop) | Accuracy94 | 10 | |
| Node Classification | Amazon Photo 50% Feat. mask | Accuracy91.9 | 10 | |
| Node Classification | Amazon Photo 50% Feat. noise | Accuracy94.2 | 10 |
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