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GradPCA: Leveraging NTK Alignment for Reliable Out-of-Distribution Detection

MCML Authors

Link to Profile Gitta Kutyniok PI Matchmaking

Gitta Kutyniok

Prof. Dr.

Principal Investigator

Abstract

We introduce GradPCA, an Out-of-Distribution (OOD) detection method that exploits the low-rank structure of neural network gradients induced by Neural Tangent Kernel (NTK) alignment. GradPCA applies Principal Component Analysis (PCA) to gradient class-means, achieving more consistent performance than existing methods across standard image classification benchmarks. We provide a theoretical perspective on spectral OOD detection in neural networks to support GradPCA, highlighting feature-space properties that enable effective detection and naturally emerge from NTK alignment. Our analysis further reveals that feature quality -- particularly the use of pretrained versus non-pretrained representations -- plays a crucial role in determining which detectors will succeed. Extensive experiments validate the strong performance of GradPCA, and our theoretical framework offers guidance for designing more principled spectral OOD detectors.

inproceedings SCV+26


ICLR 2026

14th International Conference on Learning Representations. Rio de Janeiro, Brazil, Apr 23-27, 2026. To be published. Preprint available.
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A* Conference

Authors

M. Seleznova • H.-H. Chou • C. M. Verdun • G. Kutyniok

Links

arXiv

Research Area

 A2 | Mathematical Foundations

BibTeXKey: SCV+26

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