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Mechanical Field Networks: Structured Neural Dynamics for Multivariate Systems

Researchers have developed MF-Net, a recurrent dynamical model that represents all variables in a shared field state and updates it through a learned mechanical transition, enabling both forecasting and structural readout of multivariate systems. The model achieved competitive short- and medium-horizon forecasts across known-law interactions, chaotic benchmarks, neural recordings, and ecological time series, including an eight-step R² of 0.798 on the 40-dimensional Lorenz-96 testbed. MF-Net provides a structure-readable framework where learned relations are trained through forward evolution and can be interpreted as functional predictive couplings under appropriate observational limits.

read1 min publishedJun 12, 2026

arXiv:2606.11251v1 Announce Type: new Abstract: Many multivariate dynamical systems are observed only through trajectories, leaving the mechanisms governing their joint dynamics hidden. Existing approaches can impose interpretable dynamics or learn flexible state transitions, yet the resulting interaction structure is typically either specified in advance or left implicit within the learned dynamics. We introduce MF-Net, a recurrent dynamical model that represents all variables in a shared field state and updates this state through a learned relation law. Each variable carries a field component, and these components evolve jointly through a learnable mechanical transition. Here, mechanical refers to the relation-to-motion organization of the transition, where learned relations shape state-dependent flows, field responses, and motion tendencies that move the field state forward. The resulting structure is part of the rollout itself: learned relations influence how the field moves, and the same internal quantities support both forecasting and structural readout. Across known-law interaction systems, chaotic benchmarks, real neural recordings, and ecological time series, MF-Net achieves competitive short- and medium-horizon forecasting while retaining inspectable structural readout. On the 40-dimensional Lorenz--96 testbed, MF-Net achieves an eight-step $R^2$ of $0.798\pm0.018$; across five seeds, its learned relation matrix recovers the local coupling support with a local/nonlocal strength ratio of $19.80\pm1.00$ and Precision@$K$ of $1.000\pm0.000$. MF-Net provides a structure-readable dynamical modeling framework in which learned relations are trained through forward evolution and, on real data, interpreted as functional predictive couplings under appropriate observational limits.

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