cs.AI updates on arXiv.org 10月07日
Latent MoS:对称性学习在动态系统中的应用
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本文提出了一种名为Latent Mixture of Symmetries (Latent MoS) 的模型,通过捕捉复杂动态测量中的对称性潜在因子,提高了样本效率。模型在动态学习的同时,局部且可证明地保留了潜在的对称变换,并在不同物理系统中的数值实验中优于现有基准。

arXiv:2510.03578v1 Announce Type: cross Abstract: Learning dynamics is essential for model-based control and Reinforcement Learning in engineering systems, such as robotics and power systems. However, limited system measurements, such as those from low-resolution sensors, demand sample-efficient learning. Symmetry provides a powerful inductive bias by characterizing equivariant relations in system states to improve sample efficiency. While recent methods attempt to discover symmetries from data, they typically assume a single global symmetry group and treat symmetry discovery and dynamic learning as separate tasks, leading to limited expressiveness and error accumulation. In this paper, we propose the Latent Mixture of Symmetries (Latent MoS), an expressive model that captures a mixture of symmetry-governed latent factors from complex dynamical measurements. Latent MoS focuses on dynamic learning while locally and provably preserving the underlying symmetric transformations. To further capture long-term equivariance, we introduce a hierarchical architecture that stacks MoS blocks. Numerical experiments in diverse physical systems demonstrate that Latent MoS outperforms state-of-the-art baselines in interpolation and extrapolation tasks while offering interpretable latent representations suitable for future geometric and safety-critical analyses.

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对称性学习 动态系统 Latent MoS 样本效率 模型
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