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Concolic Testing for Deep Neural Networks

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arxiv 1805.00089 v2 pith:WGAWMNHH submitted 2018-04-30 cs.LG cs.SEstat.ML

Concolic Testing for Deep Neural Networks

classification cs.LG cs.SEstat.ML
keywords concolictestingcoverageapproachdeepdnnsexecutionnetworks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Concolic testing combines program execution and symbolic analysis to explore the execution paths of a software program. This paper presents the first concolic testing approach for Deep Neural Networks (DNNs). More specifically, we formalise coverage criteria for DNNs that have been studied in the literature, and then develop a coherent method for performing concolic testing to increase test coverage. Our experimental results show the effectiveness of the concolic testing approach in both achieving high coverage and finding adversarial examples.

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