AI RESEARCH

Time-series forecasting through the lens of dynamics

arXiv CS.LG

ArXi:2507.15774v2 Announce Type: replace While deep learning is facing an homogenization across modalities led by Transformers, they are still challenged by shallow linear models in the time-series forecasting task. Our hypothesis is that models should learn a direct link from past to future data points, which we identify as a learning dynamics capability. We develop an original $\texttt{PRO-DYN}$ nomenclature to analyze existing models through the lens of dynamics.