Litcius/Paper detail

GradMDM: Adversarial Attack on Dynamic Networks

Jianhong Pan, Lin Geng Foo, Qichen Zheng, Zhipeng Fan, Hossein Rahmani, Qiuhong Ke, Jun Liu

2023IEEE Transactions on Pattern Analysis and Machine Intelligence10 citationsDOI

Abstract

Dynamic neural networks can greatly reduce computation redundancy without compromising accuracy by adapting their structures based on the input. In this paper, we explore the robustness of dynamic neural networks against energy-oriented attacks targeted at reducing their efficiency. Specifically, we attack dynamic models with our novel algorithm GradMDM. GradMDM is a technique that adjusts the direction and the magnitude of the gradients to effectively find a small perturbation for each input, that will activate more computational units of dynamic models during inference. We evaluate GradMDM on multiple datasets and dynamic models, where it outperforms previous energy-oriented attack techniques, significantly increasing computation complexity while reducing the perceptibility of the perturbations https://github.com/lingengfoo/GradMDM.

Topics & Concepts

Computer scienceComputationRobustness (evolution)InferenceAdversarial systemRedundancy (engineering)Artificial neural networkArtificial intelligenceComputational complexity theoryAlgorithmMachine learningChemistryGeneBiochemistryOperating systemAdversarial Robustness in Machine LearningAdvanced Neural Network ApplicationsAnomaly Detection Techniques and Applications
GradMDM: Adversarial Attack on Dynamic Networks | Litcius