AI RESEARCH

Neural CDEs as Correctors for Learned Time Series Models

arXiv CS.LG

ArXi:2512.12116v3 Announce Type: replace Learned time-series models, whether continuous or discrete, are widely used for forecasting the states of dynamical systems but suffer from error accumulation in multi-step forecasts. To address this issue, we propose a Predictor-Corrector framework in which the Predictor is a learned time-series model that generates multi-step forecasts and the Corrector is a neural controlled differential equation that corrects the forecast errors.