Manipulating Feature Visualizations With Gradient Slingshots
MCML Authors
Abstract
Abstract
Feature Visualization (FV) is a widely used technique for interpreting concepts learned by Deep Neural Networks (DNNs), which synthesizes input patterns that maximally activate a given feature. Despite its popularity, the trustworthiness of FV explanations has received limited attention. We introduce Gradient Slingshots, a novel method that enables FV manipulation without modifying model architecture or significantly degrading performance. By shaping new trajectories in off-distribution regions of a feature's activation landscape, we coerce the optimization process to converge to a predefined visualization. We evaluate our approach on several DNN architectures, demonstrating its ability to replace faithful FVs with arbitrary targets. These results expose a critical vulnerability: auditors relying solely on FV may accept entirely fabricated explanations. To mitigate this risk, we propose a straightforward defense and quantitatively demonstrate its effectiveness.
inproceedings BHW+25
NeurIPS 2025
39th Conference on Neural Information Processing Systems. San Diego, CA, USA, Nov 30-Dec 07, 2025.Authors
D. Bareeva • M. Höhne • A. Warnecke • L. Pirch • K.-R. Müller • K. Rieck • S. Lapuschkin • K. BykovLinks
URL GitHubIn Collaboration
Research Area
BibTeXKey: BHW+25