2022
DOI: 10.48550/arxiv.2205.09619
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Improving Robustness against Real-World and Worst-Case Distribution Shifts through Decision Region Quantification

Abstract: The reliability of neural networks is essential for their use in safety-critical applications. Existing approaches generally aim at improving the robustness of neural networks to either real-world distribution shifts (e.g., common corruptions and perturbations, spatial transformations, and natural adversarial examples) or worst-case distribution shifts (e.g., optimized adversarial examples). In this work, we propose the Decision Region Quantification (DRQ) algorithm to improve the robustness of any differentia… Show more

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