Enabling arbitrary inference in spatio-temporal dynamic systems: A physics-inspired perspective

Published: 26 Jan 2026, Last Modified: 11 Feb 2026ICLR 2026 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Neural operators, Spatio-temporal systems, Graph neural networks, Data mining
Abstract: Modern spatio-temporal learning techniques usually exploit sampled discrete observations to foresee the future. Actually, spatio-temporal dynamics are continuous and evolve everytime and everywhere, thus modeling spatio-temporal dynamics in a continuous space can be long-standing challenge. Existing deep learning architectures often fail to generalize to unseen regions or graph topologies, while many physics-driven approaches are confined to Euclidean grids and scale poorly to complex graph structures. To address this gap, we propose PhySTA, a physics-inspired spatio-temporal learning framework designed for efficient and scalable arbitrary inference over graph-structured data. PhySTA integrates two key modules, i.e., (1) Continuous Operator-based Spectrum-Temporal Learning (CoSTL), which leverages a Graph-Time Fourier Neural Operator combined with Time-Gated Spectral Segmentation Perception to model continuous dynamics in operator space, (2) Adaptive Multi-scale Interaction (AMI) that constructs multi-scale subgraphs and introduces node-edge coupled convolution to capture discrete interaction patterns and refine continuous predictions. By bridging operator learning with node-edge-graph interaction, PhySTA achieves both continuity-aware dynamic modeling and hierarchical interactive refinement. Extensive experiments across large-scale benchmarks demonstrate that PhySTA attains state-of-the-art accuracy while reducing computation cost and lowering parameter overhead.
Primary Area: learning on time series and dynamical systems
Submission Number: 18391
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