AI RESEARCH

One-Step Graph-Structured Neural Flows for Irregular Multivariate Time Series Classification

arXiv CS.AI

ArXi:2605.10179v1 Announce Type: cross Neural Flows efficiently model irregular multivariate time series by directly learning ODE solution trajectories with neural networks, bypassing step-by-step numerical solvers. Despite their efficiency, many existing approaches treat variables independently, leaving inter-variable interactions underexplored. Moreover, their one-step mapping makes interaction modeling inherently challenging, as it removes the iterative refinement of interactions during learning. To address this challenge, we propose one-step Graph-Structured Neural Flows (GSNF), which