Verifying Safety of Neural Networks from Topological Perspectives
Zhen Liang, Dejin Ren, Bai Xue, Ji Wang, Wenjing Yang, Wanwei Liu

TL;DR
This paper introduces a topological approach to safety verification of neural networks, leveraging properties like homeomorphism and open maps to efficiently determine if outputs stay within safe bounds.
Contribution
It proposes a novel set-boundary reachability method that exploits topological properties of neural networks to improve safety verification efficiency and applicability.
Findings
Applicable to invertible residual networks and Neural ODEs.
Reduces computational burden by focusing on input set boundaries.
Demonstrates effectiveness through multiple examples.
Abstract
Neural networks (NNs) are increasingly applied in safety-critical systems such as autonomous vehicles. However, they are fragile and are often ill-behaved. Consequently, their behaviors should undergo rigorous guarantees before deployment in practice. In this paper, we propose a set-boundary reachability method to investigate the safety verification problem of NNs from a topological perspective. Given an NN with an input set and a safe set, the safety verification problem is to determine whether all outputs of the NN resulting from the input set fall within the safe set. In our method, the homeomorphism property and the open map property of NNs are mainly exploited, which establish rigorous guarantees between the boundaries of the input set and the boundaries of the output set. The exploitation of these two properties facilitates reachability computations via extracting subsets of the…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · S100 Proteins and Annexins · Computational Drug Discovery Methods
