Verifying Graph Neural Networks with Readout is Intractable
Chernobrovkin, Artem, Sälzer, Marco, Schwarzentruber, François, Troquard, Nicolas
–arXiv.org Artificial Intelligence
We introduce a logical language for reasoning about quantized aggregate-combine graph neural networks with global readout (ACR-GNNs). We provide a logical characterization and use it to prove that verification tasks for quantized GNNs with readout are (co)NEXPTIME-complete. This result implies that the verification of quantized GNNs is computationally intractable, prompting substantial research efforts toward ensuring the safety of GNN-based systems. We also experimentally demonstrate that quantized ACR-GNN models are lightweight while maintaining good accuracy and generalization capabilities with respect to non-quantized models.
arXiv.org Artificial Intelligence
Oct-10-2025