Graph variate neural networks
Roy, Om and Moshfeghi, Yashar and Smith, Keith (2025) Graph variate neural networks. Other. arXiv, Ithaca, NY. (https://doi.org/10.48550/arXiv.2509.20311)
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Abstract
Modelling dynamically evolving spatio-temporal signals is a prominent challenge in the Graph Neural Network (GNN) literature. Notably, GNNs assume an existing underlying graph structure. While this underlying structure may not always exist or is derived independently from the signal, a temporally evolving functional network can always be constructed from multi-channel data. Graph Variate Signal Analysis (GVSA) defines a unified framework consisting of a network tensor of instantaneous connectivity profiles against a stable support usually constructed from the signal itself. Building on GVSA and tools from graph signal processing, we introduce Graph-Variate Neural Networks (GVNNs): layers that convolve spatio-temporal signals with a signal-dependent connectivity tensor combining a stable long-term support with instantaneous, data-driven interactions. This design captures dynamic statistical interdependencies at each time step without ad hoc sliding windows and admits an efficient implementation with linear complexity in sequence length. Across forecasting benchmarks, GVNNs consistently outperform strong graph-based baselines and are competitive with widely used sequence models such as LSTMs and Transformers. On EEG motor-imagery classification, GVNNs achieve strong accuracy highlighting their potential for brain-computer interface applications.
ORCID iDs
Roy, Om, Moshfeghi, Yashar
ORCID: https://orcid.org/0000-0003-4186-1088 and Smith, Keith;
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Item type: Monograph(Other) ID code: 94781 Dates: DateEvent24 September 2025PublishedSubjects: Science > Mathematics > Electronic computers. Computer science Department: Faculty of Science > Computer and Information Sciences Depositing user: Pure Administrator Date deposited: 21 Nov 2025 13:24 Last modified: 22 Jan 2026 01:11 URI: https://strathprints.strath.ac.uk/id/eprint/94781
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