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Incremental Neural Network Verification via Learned Conflicts

arXiv:2603.12232v146.1h-index: 2
Predicted impact top 7% in LO · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses efficiency issues for users of neural network verifiers, but it is incremental as it builds on existing branch-and-bound methods.

The paper tackles the problem of redundancy in neural network verification by proposing an incremental technique that reuses learned conflicts across related queries, achieving speedups of up to 1.9x over a non-incremental baseline.

Neural network verification is often used as a core component within larger analysis procedures, which generate sequences of closely related verification queries over the same network. In existing neural network verifiers, each query is typically solved independently, and information learned during previous runs is discarded, leading to repeated exploration of the same infeasible regions of the search space. In this work, we aim to expedite verification by reducing this redundancy. We propose an incremental verification technique that reuses learned conflicts across related verification queries. The technique can be added on top of any branch-and-bound-based neural network verifier. During verification, the verifier records conflicts corresponding to learned infeasible combinations of activation phases, and retains them across runs. We formalize a refinement relation between verification queries and show that conflicts learned for a query remain valid under refinement, enabling sound conflict inheritance. Inherited conflicts are handled using a SAT solver to perform consistency checks and propagation, allowing infeasible subproblems to be detected and pruned early during search. We implement the proposed technique in the Marabou verifier and evaluate it on three verification tasks: local robustness radius determination, verification with input splitting, and minimal sufficient feature set extraction. Our experiments show that incremental conflict reuse reduces verification effort and yields speedups of up to $1.9\times$ over a non-incremental baseline.

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