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Stuart-Landau Oscillatory Graph Neural Network

About

Oscillatory Graph Neural Networks (OGNNs) are an emerging class of physics-inspired architectures designed to mitigate oversmoothing and vanishing gradient problems in deep GNNs. In this work, we introduce the Complex-Valued Stuart-Landau Graph Neural Network (SLGNN), a novel architecture grounded in Stuart-Landau oscillator dynamics. Stuart-Landau oscillators are canonical models of limit-cycle behavior near Hopf bifurcations, which are fundamental to synchronization theory and are widely used in e.g. neuroscience for mesoscopic brain modeling. Unlike harmonic oscillators and phase-only Kuramoto models, Stuart-Landau oscillators retain both amplitude and phase dynamics, enabling rich phenomena such as amplitude regulation and multistable synchronization. The proposed SLGNN generalizes existing phase-centric Kuramoto-based OGNNs by allowing node feature amplitudes to evolve dynamically according to Stuart-Landau dynamics, with explicit tunable hyperparameters (such as the Hopf-parameter and the coupling strength) providing additional control over the interplay between feature amplitudes and network structure. We conduct extensive experiments across node classification, graph classification, and graph regression tasks, demonstrating that SLGNN outperforms existing OGNNs and establishes a novel, expressive, and theoretically grounded framework for deep oscillatory architectures on graphs.

Kaicheng Zhang, David N. Reynolds, Piero Deidda, Francesco Tudisco• 2025

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy71.7
742
Graph ClassificationMUTAG
Accuracy78.84
697
Node ClassificationChameleon
Accuracy66.03
549
Node ClassificationSquirrel
Accuracy61.82
500
Node ClassificationCornell
Accuracy76.27
426
Node ClassificationTexas
Accuracy0.8516
410
Node ClassificationWisconsin
Accuracy86.08
410
Node Classificationamazon-ratings
Accuracy53.5
138
Graph ClassificationENZYMES MoleculeNet
Accuracy48.43
12
Graph RegressionOGBG-MOL FreeSolv (random)
L2 Loss1.949
12
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