AI RESEARCH

Verification of Unknown Dynamical Systems via Autoencoder Latent Space

arXiv CS.LG

ArXi:2512.13593v4 Announce Type: replace Formal verification provides a powerful framework for proving that dynamical systems satisfy their specifications. However, these techniques face scalability challenges in high-dimensional settings, as they often rely on state-space discretization which grows exponentially with dimension. Learning-based approaches to dimensionality reduction, utilizing neural networks and autoencoders, have shown great potential to alleviate this problem. However, ensuring correctness of latent space verification results remains an open question.