AI RESEARCH

Artifacts of Numerical Integration in Learning Dynamical Systems

arXiv CS.LG

ArXi:2507.14491v3 Announce Type: replace-cross In many applications, one needs to learn a dynamical system from its solutions sampled at a finite number of time points. The learning problem is often formulated as an optimization problem over a chosen function class. However, in the optimization procedure, prediction data from generic dynamics requires a numerical integrator to assess the mismatch with the observed data. This paper reveals potentially serious effects of a chosen numerical scheme on the learning outcome.