Perturbing the Phase: Analyzing Adversarial Robustness of Complex-Valued Neural NetworksOpen Access

Eilers, Florian; Duhme, Christof; Jiang, Xiaoyi

Research article in digital collection | Preprint

Abstract

Complex-valued neural networks (CVNNs) are rising in popularity for all kinds of applications. To safely use CVNNs in practice, analyzing their robustness against outliers is crucial. One well known technique to understand the behavior of deep neural networks is to investigate their behavior under adversarial attacks, which can be seen as worst case minimal perturbations. We design Phase Attacks, a kind of attack specifically targeting the phase information of complex-valued inputs. Additionally, we derive complex-valued versions of commonly used adversarial attacks. We show that in some scenarios CVNNs are more robust than RVNNs and that both are very susceptible to phase changes with the Phase Attacks decreasing the model performance more, than equally strong regular attacks, which can attack both phase and magnitude.

Details about the publication

Name of the repositoryarXiv
Article number2602.06577
Statussubmitted / under review
Release year2026 (06/02/2026)
DOI10.48550/arXiv.2602.06577
Link to the full texthttps://arxiv.org/abs/2602.06577

Authors from the University of Münster

Duhme, Christof
Professur für Praktische Informatik (Prof. Jiang)
Eilers, Florian
Professur für Praktische Informatik (Prof. Jiang)
Jiang, Xiaoyi
Professur für Praktische Informatik (Prof. Jiang)