English

The #DNN-Verification Problem: Counting Unsafe Inputs for Deep Neural Networks

Artificial Intelligence 2023-06-21 v4 Machine Learning

Abstract

Deep Neural Networks are increasingly adopted in critical tasks that require a high level of safety, e.g., autonomous driving. While state-of-the-art verifiers can be employed to check whether a DNN is unsafe w.r.t. some given property (i.e., whether there is at least one unsafe input configuration), their yes/no output is not informative enough for other purposes, such as shielding, model selection, or training improvements. In this paper, we introduce the #DNN-Verification problem, which involves counting the number of input configurations of a DNN that result in a violation of a particular safety property. We analyze the complexity of this problem and propose a novel approach that returns the exact count of violations. Due to the #P-completeness of the problem, we also propose a randomized, approximate method that provides a provable probabilistic bound of the correct count while significantly reducing computational requirements. We present experimental results on a set of safety-critical benchmarks that demonstrate the effectiveness of our approximate method and evaluate the tightness of the bound.

Keywords

Cite

@article{arxiv.2301.07068,
  title  = {The #DNN-Verification Problem: Counting Unsafe Inputs for Deep Neural Networks},
  author = {Luca Marzari and Davide Corsi and Ferdinando Cicalese and Alessandro Farinelli},
  journal= {arXiv preprint arXiv:2301.07068},
  year   = {2023}
}

Comments

Accepted in the International Joint Conference on Artificial Intelligence (IJCAI), 2023. [Marzari and Corsi contributed equally]

R2 v1 2026-06-28T08:13:43.221Z