Reconstructing Network Inputs with Additive Perturbation Signatures

04/11/2019
by   Nick Moran, et al.
0

In this work, we present preliminary results demonstrating the ability to recover a significant amount of information about secret model inputs given only very limited access to model outputs and the ability evaluate the model on additive perturbations to the input.

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