菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-06-17
📄 Abstract - Structure Over Nonlinearity: Explicit Interaction Architectures for Dynamical Learning

Most learning architectures for dynamical systems rely on generic nonlinear function approximation, often requiring high model complexity to capture structured behaviors. In this work, we propose an alternative paradigm in which modeling capability arises primarily from structure rather than from expressive nonlinearities. We introduce a class of explicit structured dynamical units based on wave-inspired interaction structures with internal state. Inspired by wave-based computational principles, the proposed units adopt a strictly causal organization that eliminates algebraic loops, yielding fully explicit models that can be evaluated without implicit solvers. Stacking such units produces layered dynamical architectures with emergent hierarchical behavior. Through experiments on a nonlinear system identification task, we show that depth improves both representation quality and generalization, even under limited parameter optimization. In particular, the proposed architectures produce informative internal representations even under readout-only fitting, indicating that useful dynamical structure emerges from the organization of interactions prior to substantial parameter optimization. These results suggest that structure-first design provides a viable and effective alternative to conventional black-box approaches for learning dynamical systems, highlighting the role of interaction structure as a primary source of model expressivity.

顶级标签: machine learning systems
详细标签: dynamical systems structured architectures system identification wave-inspired models interaction structure 或 搜索:

结构优于非线性:面向动态学习的显式交互架构 / Structure Over Nonlinearity: Explicit Interaction Architectures for Dynamical Learning


1️⃣ 一句话总结

该论文提出一种全新的动态系统学习范式,通过精心设计的内部交互结构(而非传统非线性函数)来赋予模型表达能力,从而构建出更简洁、可解释且无需复杂求解器的显式神经网络架构。

源自 arXiv: 2606.19101