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Continuous Product Graph Neural Networks

About

Processing multidomain data defined on multiple graphs holds significant potential in various practical applications in computer science. However, current methods are mostly limited to discrete graph filtering operations. Tensorial partial differential equations on graphs (TPDEGs) provide a principled framework for modeling structured data across multiple interacting graphs, addressing the limitations of the existing discrete methodologies. In this paper, we introduce Continuous Product Graph Neural Networks (CITRUS) that emerge as a natural solution to the TPDEG. CITRUS leverages the separability of continuous heat kernels from Cartesian graph products to efficiently implement graph spectral decomposition. We conduct thorough theoretical analyses of the stability and over-smoothing properties of CITRUS in response to domain-specific graph perturbations and graph spectra effects on the performance. We evaluate CITRUS on well-known traffic and weather spatiotemporal forecasting datasets, demonstrating superior performance over existing approaches. The implementation codes are available at https://github.com/ArefEinizade2/CITRUS.

Aref Einizade, Fragkiskos D. Malliaros, Jhony H. Giraldo• 2024

Related benchmarks

TaskDatasetResultRank
Traffic speed forecastingMETR-LA (test)
MAE2.7
200
Traffic ForecastingMETR-LA
MAE2.7
183
Traffic speed forecastingPEMS-BAY (test)
MAE1.21
98
Traffic ForecastingNAVER-Seoul
MAE5.29
78
Spatio-temporal forecastingMolene weather dataset (France)
MAE0.497
50
Air quality forecastingChina regional air quality
MAE27.4
30
Weather forecastingMolene (test)
rNMSE0.23
25
Weather forecastingNOAA (test)
rNMSE0.04
25
Spatio-temporal forecastingPEMS08 (USA)
MAE17.89
10
Spatio-temporal forecastingPEMS04 USA
MAE22.64
10
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