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Abstract
It is perhaps no longer surprising that machine learning models, especially
deep neural networks, are particularly vulnerable to attacks. One such
vulnerability that has been well studied is model extraction: a phenomenon in
which the attacker attempts to steal a victim's model by training a surrogate
model to mimic the decision boundaries of the victim model. Previous works have
demonstrated the effectiveness of such an attack and its devastating
consequences, but much of this work has been done primarily for image and text
processing tasks. Our work is the first attempt to perform model extraction on
{\em audio classification models}. We are motivated by an attacker whose goal
is to mimic the behavior of the victim's model trained to identify a speaker.
This is particularly problematic in security-sensitive domains such as
biometric authentication. We find that prior model extraction techniques, where
the attacker \textit{naively} uses a proxy dataset to attack a potential
victim's model, fail. We therefore propose the use of a generative model to
create a sufficiently large and diverse pool of synthetic attack queries. We
find that our approach is able to extract a victim's model trained on
\texttt{LibriSpeech} using queries synthesized with a proxy dataset based off
of \texttt{VoxCeleb}; we achieve a test accuracy of 84.41\% with a budget of 3
million queries.