English

Higher-Order Singular-Value Derivatives of Rectangular Real Matrices

Machine Learning 2025-11-17 v4 Machine Learning

Abstract

We present a theoretical framework for deriving the general nn-th order Fr\'echet derivatives of singular values in real rectangular matrices, by leveraging reduced resolvent operators from Kato's analytic perturbation theory for self-adjoint operators. Deriving closed-form expressions for higher-order derivatives of singular values is notoriously challenging through standard matrix-analysis techniques. To overcome this, we treat a real rectangular matrix as a compact operator on a finite-dimensional Hilbert space, and embed the rectangular matrix into a block self-adjoint operator so that non-symmetric perturbations are captured. Applying Kato's asymptotic eigenvalue expansion to this construction, we obtain a general, closed-form expression for the infinitesimal nn-th order spectral variations. Specializing to n=2n=2 and deploying on a Kronecker-product representation with matrix convention yield the Hessian of a singular value, not found in literature. By bridging abstract operator-theoretic perturbation theory with matrices, our framework equips researchers with a practical toolkit for higher-order spectral sensitivity studies in random matrix applications (e.g., adversarial perturbation in deep learning).

Cite

@article{arxiv.2506.03764,
  title  = {Higher-Order Singular-Value Derivatives of Rectangular Real Matrices},
  author = {Róisín Luo and James McDermott and Colm O'Riordan},
  journal= {arXiv preprint arXiv:2506.03764},
  year   = {2025}
}
R2 v1 2026-07-01T02:58:40.490Z