2021
DOI: 10.4204/eptcs.342.4
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Sensitive Samples Revisited: Detecting Neural Network Attacks Using Constraint Solvers

Abstract: Neural Networks are used today in numerous security-and safety-relevant domains and are, as such, a popular target of attacks that subvert their classification capabilities, by manipulating the network parameters. Prior work has introduced sensitive samples-inputs highly sensitive to parameter changes-to detect such manipulations, and proposed a gradient ascent-based approach to compute them. In this paper we offer an alternative, using symbolic constraint solvers. We model the network and a formal specificati… Show more

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