AI RESEARCH

Multi-Scale Wavelet Transformers for Operator Learning of Dynamical Systems

arXiv CS.LG

ArXi:2602.01486v2 Announce Type: replace Recent years have seen a surge in data-driven surrogates for dynamical systems that can be orders of magnitude faster than numerical solvers. However, many machine learning-based models such as neural operators exhibit spectral bias, attenuating high-frequency components that often encode small-scale structure. This limitation is particularly damaging in applications such as weather forecasting, where misrepresented high frequencies can induce long-horizon instability.