Extending Neural Network Verification to a Larger Family of Piece-wise Linear Activation Functions

László Antal
(RWTH Aachen University)
Hana Masara
(RWTH Aachen University)
Erika Ábrahám
(RWTH Aachen University)

In this paper, we extend an available neural network verification technique to support a wider class of piece-wise linear activation functions. Furthermore, we extend the algorithms, which provide in their original form exact respectively over-approximative results for bounded input sets represented as start sets, to allow also unbounded input set. We implemented our algorithms and demonstrated their effectiveness in some case studies.

In Marie Farrell, Matt Luckcuck, Mario Gleirscher and Maike Schwammberger: Proceedings Fifth International Workshop on Formal Methods for Autonomous Systems (FMAS 2023), Leiden, The Netherlands, 15th and 16th of November 2023, Electronic Proceedings in Theoretical Computer Science 395, pp. 30–68.
Published: 15th November 2023.

ArXived at: https://dx.doi.org/10.4204/EPTCS.395.4 bibtex PDF
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