SPLITZ: Certifiable Robustness via Split Lipschitz Randomized Smoothing

Research output: Contribution to journalArticlepeer-review

Abstract

Certifiable robustness gives the guarantee that small perturbations around an input to a classifier will not change the prediction. There are two approaches to provide certifiable robustness to adversarial examples– 1) explicitly training classifiers with small Lipschitz constants, and 2) Randomized smoothing, which adds random noise to the input to create a smooth classifier. We propose SPLITZ, a practical and novel approach which leverages the synergistic benefits of both the above ideas into a single framework. Our main idea is to split a classifier into two halves, constrain the Lipschitz constant of the first half, and smooth the second half via randomization. Motivation for SPLITZ comes from the observation that many standard deep networks exhibit heterogeneity in Lipschitz constants across layers. SPLITZ can exploit this heterogeneity while inheriting the scalability of randomized smoothing. We present a principled approach to train SPLITZ and provide theoretical analysis to derive certified robustness guarantees during inference. We present a comprehensive comparison of robustness-accuracy trade-offs and show that SPLITZ consistently improves on existing state-of-the-art approaches in the MNIST, CIFAR-10 and ImageNet datasets. For instance, with ℓ2 norm perturbation budget of ϵ = 1 , SPLITZ achieves 43.2% top-1 test accuracy on CIFAR-10 dataset compared to state-of-art top-1 test accuracy 39.8%.

Original languageEnglish (US)
Pages (from-to)9099-9112
Number of pages14
JournalIEEE Transactions on Information Forensics and Security
Volume20
DOIs
StatePublished - 2025

Keywords

  • Certified defense
  • Lipschitz constants
  • adversarial defense
  • randomized smoothing

ASJC Scopus subject areas

  • Safety, Risk, Reliability and Quality
  • Computer Networks and Communications

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