AI RESEARCH

An entropy formula for the Deep Linear Network

arXiv CS.LG

ArXi:2509.09088v3 Announce Type: replace We study the Riemannian geometry of the Deep Linear Network (DLN) as a foundation for a thermodynamic description of the learning process. The main tools are the use of group actions to analyze overparametrization and the use of Riemannian submersion from the space of parameters to the space of observables. The foliation of the balanced manifold in the parameter space by group orbits is used to define and compute a Boltzmann entropy.