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A Robust Optimisation Perspective on Counterexample-Guided Repair of Neural Networks

Counterexample-guided repair is analyzed as a robust optimization problem, with termination proven for certain models and disproven in general, and a novel repair algorithm developed for linear regression.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2301.11342v2ARXIV-DEFAULT
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Abstract

Counterexample-guided repair aims at creating neural networks with mathematical safety guarantees, facilitating the application of neural networks in safety-critical domains. However, whether counterexample-guided repair is guaranteed to terminate remains an open question. We approach this question by showing that counterexample-guided repair can be viewed as a robust optimisation algorithm. While termination guarantees for neural network repair itself remain beyond our reach, we prove termination for more restrained machine learning models and disprove termination in a general setting. We empirically study the practical implications of our theoretical results, demonstrating the suitability of common verifiers and falsifiers for repair despite a disadvantageous theoretical result. Additionally, we use our theoretical insights to devise a novel algorithm for repairing linear regression models based on quadratic programming, surpassing existing approaches.

Authors

3