AI RESEARCH

Structural Correspondence and Universal Approximation in Diagonal plus Low-Rank Neural Networks

arXiv CS.LG

ArXi:2605.05659v1 Announce Type: new The massive computational costs of scaling modern deep learning architectures have driven the widespread use of parameter-efficient low-rank structures, such as LoRA and low-rank factorization. However, theoretical guarantees for their expressive power are less explored, often relying on restrictive priors like a pretrained base matrix, ReLU activations or non-verifiable singularity conditions. We first investigate the limits of neural networks constrained strictly to low-rank manifolds without pretrained dense priors.