Deep Neural Networks (DNNs) have emerged as an effective approach to tackling real-world problems. However, like human-written software, DNNs can have bugs and can be attacked. To address this, research has explored a wide-range of algorithmic approaches to verify DNN behavior. In this work, we introduce NeuralSAT, a new verification approach that adapts the widely-used DPLL(T) algorithm used in modern SMT solvers. A key feature of SMT solvers is the use of conflict clause learning and search restart to scale verification. Unlike prior DNN verification approaches, NeuralSAT combines an abstraction-based deductive theory solver with clause learning and an evaluation clearly demonstrates the benefits of the approach on a set of challenging verification benchmarks.
@article{arxiv.2307.10266,
title = {A DPLL(T) Framework for Verifying Deep Neural Networks},
author = {Hai Duong and ThanhVu Nguyen and Matthew Dwyer},
journal= {arXiv preprint arXiv:2307.10266},
year = {2024}
}
Comments
NeuralSAT is avaliable at: https://github.com/dynaroars/neuralsat