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Incremental Satisfiability Modulo Theory for Verification of Deep Neural Networks

Authors :
Yang, Pengfei
Chi, Zhiming
Liu, Zongxin
Zhao, Mengyu
Huang, Cheng-Chao
Cai, Shaowei
Zhang, Lijun
Publication Year :
2023

Abstract

Constraint solving is an elementary way for verification of deep neural networks (DNN). In the domain of AI safety, a DNN might be modified in its structure and parameters for its repair or attack. For such situations, we propose the incremental DNN verification problem, which asks whether a safety property still holds after the DNN is modified. To solve the problem, we present an incremental satisfiability modulo theory (SMT) algorithm based on the Reluplex framework. We simulate the most important features of the configurations that infers the verification result of the searching branches in the old solving procedure (with respect to the original network), and heuristically check whether the proofs are still valid for the modified DNN. We implement our algorithm as an incremental solver called DeepInc, and exerimental results show that DeepInc is more efficient in most cases. For the cases that the property holds both before and after modification, the acceleration can be faster by several orders of magnitude, showing that DeepInc is outstanding in incrementally searching for counterexamples. Moreover, based on the framework, we propose the multi-objective DNN repair problem and give an algorithm based on our incremental SMT solving algorithm. Our repair method preserves more potential safety properties on the repaired DNNs compared with state-of-the-art.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.06455
Document Type :
Working Paper