This paper proposes a novel approach to verifying the equivalence of neural networks, particularly after pruning and retraining, using differential verification with Zonotopes and introducing a new confidence-based equivalence property for enhanced guarantees.
Determining whether a neural-network control system can reach a specific state from a set of initial states is undecidable, even for simple systems.
DEEPCDCL introduces an efficient neural network verification framework based on the Conflict-Driven Clause Learning (CDCL) algorithm, aiming to enhance speed and accuracy in verification processes.