PRIMA: general and precise neural network certification via scalable convex hull approximations

Author:

Müller Mark Niklas1,Makarchuk Gleb1ORCID,Singh Gagandeep2,Püschel Markus1,Vechev Martin1

Affiliation:

1. ETH Zurich, Switzerland

2. VMware Research, USA / University of Illinois at Urbana-Champaign, USA

Abstract

Formal verification of neural networks is critical for their safe adoption in real-world applications. However, designing a precise and scalable verifier which can handle different activation functions, realistic network architectures and relevant specifications remains an open and difficult challenge. In this paper, we take a major step forward in addressing this challenge and present a new verification framework, called PRIMA. PRIMA is both (i) general: it handles any non-linear activation function, and (ii) precise: it computes precise convex abstractions involving multiple neurons via novel convex hull approximation algorithms that leverage concepts from computational geometry. The algorithms have polynomial complexity, yield fewer constraints, and minimize precision loss. We evaluate the effectiveness of PRIMA on a variety of challenging tasks from prior work. Our results show that PRIMA is significantly more precise than the state-of-the-art, verifying robustness to input perturbations for up to 20%, 30%, and 34% more images than existing work on ReLU-, Sigmoid-, and Tanh-based networks, respectively. Further, PRIMA enables, for the first time, the precise verification of a realistic neural network for autonomous driving within a few minutes.

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,Software

Reference68 articles.

1. Optimization and abstraction: a synergistic approach for analyzing neural network robustness

2. Strong mixed-integer programming formulations for trained neural networks

3. A basis enumeration algorithm for linear systems with geometric applications

4. A pivoting algorithm for convex hulls and vertex enumeration of arrangements and polyhedra

5. Mislav Balunovic , Maximilian Baader , Gagandeep Singh , Timon Gehr , and Martin T. Vechev . 2019 . Certifying Geometric Robustness of Neural Networks. In Advances in Neural Information Processing Systems 32: Annual Conference on Neural Information Processing Systems 2019 , NeurIPS 2019 , December 8-14, 2019, Vancouver, BC, Canada, Hanna M. Wallach, Hugo Larochelle, Alina Beygelzimer, Florence d’Alché-Buc, Emily B. Fox, and Roman Garnett (Eds.). 15287–15297. https://proceedings.neurips.cc/paper/2019/hash/f7fa6aca028e7ff4ef62d75ed025fe76-Abstract.html Mislav Balunovic, Maximilian Baader, Gagandeep Singh, Timon Gehr, and Martin T. Vechev. 2019. Certifying Geometric Robustness of Neural Networks. In Advances in Neural Information Processing Systems 32: Annual Conference on Neural Information Processing Systems 2019, NeurIPS 2019, December 8-14, 2019, Vancouver, BC, Canada, Hanna M. Wallach, Hugo Larochelle, Alina Beygelzimer, Florence d’Alché-Buc, Emily B. Fox, and Roman Garnett (Eds.). 15287–15297. https://proceedings.neurips.cc/paper/2019/hash/f7fa6aca028e7ff4ef62d75ed025fe76-Abstract.html

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