AI RESEARCH

The Propagation Field: A Geometric Substrate Theory of Deep Learning

arXiv CS.LG

ArXi:2605.08529v1 Announce Type: new Modern deep learning treats neural networks primarily as endpoint functions from inputs to outputs. Inspired by the shift from force to geometry in physics, we ask whether a network should instead be understood through the geometry of its internal propagation. We define a neural propagation field as the collection of hidden-state trajectories and local Jacobian operators across depth. Endpoint losses constrain only the boundary behavior of this field, leaving its interior geometry underdetermined.