Artikel

Advances in verification of ReLU neural networks

We consider the problem of verifying linear properties of neural networks. Despite their success in many classification and prediction tasks, neural networks may return unexpected results for certain inputs. This is highly problematic with respect to the application of neural networks for safety-critical tasks, e.g. in autonomous driving. We provide an overview of algorithmic approaches that aim to provide formal guarantees on the behaviour of neural networks. Moreover, we present new theoretical results with respect to the approximation of ReLU neural networks. On the other hand, we implement a solver for verification of ReLU neural networks which combines mixed integer programming with specialized branching and approximation techniques. To evaluate its performance, we conduct an extensive computational study. For that we use test instances based on the ACAS Xu system and the MNIST handwritten digit data set. The results indicate that our approach is very competitive with others, i.e. it outperforms the solvers of Bunel et al. (in: Bengio, Wallach, Larochelle, Grauman, Cesa-Bianchi, Garnett (eds) Advances in neural information processing systems (NIPS 2018), 2018) and Reluplex (Katz et al. in: Computer aided verification—29th international conference, CAV 2017, Heidelberg, Germany, July 24–28, 2017, Proceedings, 2017). In comparison to the solvers ReluVal (Wang et al. in: 27th USENIX security symposium (USENIX Security 18), USENIX Association, Baltimore, 2018a) and Neurify (Wang et al. in: 32nd Conference on neural information processing systems (NIPS), Montreal, 2018b), the number of necessary branchings is much smaller. Our solver is publicly available and able to solve the verification problem for instances which do not have independent bounds for each input neuron.

Language
Englisch

Bibliographic citation
Journal: Journal of Global Optimization ; ISSN: 1573-2916 ; Volume: 81 ; Year: 2020 ; Issue: 1 ; Pages: 109-152 ; New York, NY: Springer US

Classification
Mathematik
Subject
Neural networks verification
ReLU
MIP

Event
Geistige Schöpfung
(who)
Rössig, Ansgar
Petkovic, Milena
Event
Veröffentlichung
(who)
Springer US
(where)
New York, NY
(when)
2020

DOI
doi:10.1007/s10898-020-00949-1
Last update
10.03.2025, 11:43 AM CET

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Object type

  • Artikel

Associated

  • Rössig, Ansgar
  • Petkovic, Milena
  • Springer US

Time of origin

  • 2020

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