AI RESEARCH

Learning Dynamics from Input-Output Data with Hamiltonian Gaussian Processes

arXiv CS.LG

ArXi:2511.05330v2 Announce Type: replace Embedding non-restrictive prior knowledge, such as energy conservation laws, into learning methods is a key motive to construct physically consistent dynamics models from limited data, relevant for, e.g., model-based control. Recent work incorporates Hamiltonian dynamics into Gaussian Processes (GPs) to obtain uncertainty-quantifying, energy-consistent models, but these methods rely on -- rarely available -- velocity or momentum data.