English

Relative Representations: Topological and Geometric Perspectives

Machine Learning 2025-10-27 v3

Abstract

Relative representations are an established approach to zero-shot model stitching, consisting of a non-trainable transformation of the latent space of a deep neural network. Based on insights of topological and geometric nature, we propose two improvements to relative representations. First, we introduce a normalization procedure in the relative transformation, resulting in invariance to non-isotropic rescalings and permutations. The latter coincides with the symmetries in parameter space induced by common activation functions. Second, we propose to deploy topological densification when fine-tuning relative representations, a topological regularization loss encouraging clustering within classes. We provide an empirical investigation on a natural language task, where both the proposed variations yield improved performance on zero-shot model stitching.

Keywords

Cite

@article{arxiv.2409.10967,
  title  = {Relative Representations: Topological and Geometric Perspectives},
  author = {Alejandro García-Castellanos and Giovanni Luca Marchetti and Danica Kragic and Martina Scolamiero},
  journal= {arXiv preprint arXiv:2409.10967},
  year   = {2025}
}
R2 v1 2026-06-28T18:47:30.141Z