AI RESEARCH

Continuous Limits of Coupled Flows in Representation Learning

arXiv CS.LG

ArXi:2604.16801v1 Announce Type: new While modern representation learning relies heavily on global error signals, decentralized algorithms driven by local interactions offer a fundamental distributed alternative. However, the macroscopic convergence properties of these discrete dynamics on continuous data manifolds remain theoretically unresolved, notoriously suffering from parameter explosion. We bridge this gap by formalizing decentralized learning as a coupled slow-fast dynamical system on Riemannian manifolds.