2023
DOI: 10.48550/arxiv.2301.07068
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The #DNN-Verification problem: Counting Unsafe Inputs for Deep Neural Networks

Abstract: Deep Neural Networks are increasingly adopted in critical tasks that require a high level of safety, e.g., autonomous driving. While state-of-the-art verifiers can be employed to check whether a DNN is unsafe w.r.t. some given property (i.e., whether there is at least one unsafe input configuration), their yes/no output is not informative enough for other purposes, such as shielding, model selection, or training improvements. In this paper, we introduce the #DNN-Verification problem, which involves counting th… Show more

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