43
0

Adaptive Branch-and-Bound Tree Exploration for Neural Network Verification

Abstract

Formal verification is a rigorous approach that can provably ensure the quality of neural networks, and to date, Branch and Bound (BaB) is the state-of-the-art that performs verification by splitting the problem as needed and applying off-the-shelf verifiers to sub-problems for improved performance. However, existing BaB may not be efficient, due to its naive way of exploring the space of sub-problems that ignores the \emph{importance} of different sub-problems. To bridge this gap, we first introduce a notion of ``importance'' that reflects how likely a counterexample can be found with a sub-problem, and then we devise a novel verification approach, called ABONN, that explores the sub-problem space of BaB adaptively, in a Monte-Carlo tree search (MCTS) style. The exploration is guided by the ``importance'' of different sub-problems, so it favors the sub-problems that are more likely to find counterexamples. As soon as it finds a counterexample, it can immediately terminate; even though it cannot find, after visiting all the sub-problems, it can still manage to verify the problem. We evaluate ABONN with 552 verification problems from commonly-used datasets and neural network models, and compare it with the state-of-the-art verifiers as baseline approaches. Experimental evaluation shows that ABONN demonstrates speedups of up to 15.2×15.2\times on MNIST and 24.7×24.7\times on CIFAR-10. We further study the influences of hyperparameters to the performance of ABONN, and the effectiveness of our adaptive tree exploration.

View on arXiv
@article{fukuda2025_2505.00963,
  title={ Adaptive Branch-and-Bound Tree Exploration for Neural Network Verification },
  author={ Kota Fukuda and Guanqin Zhang and Zhenya Zhang and Yulei Sui and Jianjun Zhao },
  journal={arXiv preprint arXiv:2505.00963},
  year={ 2025 }
}
Comments on this paper