2022
DOI: 10.48550/arxiv.2206.11939
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Measuring Representational Robustness of Neural Networks Through Shared Invariances

Abstract: A major challenge in studying robustness in deep learning is defining the set of "meaningless" perturbations to which a given Neural Network (NN) should be invariant. Most work on robustness implicitly uses a human as the reference model to define such perturbations. Our work offers a new view on robustness by using another reference NN to define the set of perturbations a given NN should be invariant to, thus generalizing the reliance on a reference "human NN" to any NN. This makes measuring robustness equiva… Show more

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