CryptoDB
Yantian Shen
Publications
Year
Venue
Title
2024
ASIACRYPT
Hard-Label Cryptanalytic Extraction of Neural Network Models
Abstract
The machine learning problem of
extracting neural network parameters
has been proposed for nearly three decades.
Functionally equivalent extraction is a crucial goal
for research on this problem.
When the adversary has access to
the raw output of neural networks, various attacks,
including those presented at CRYPTO 2020 and EUROCRYPT 2024,
have successfully achieved this goal.
However, this goal is not achieved
when neural networks operate under a hard-label setting
where the raw output is inaccessible.
In this paper,
we propose the first attack that theoretically achieves
functionally equivalent extraction under the hard-label setting,
which applies to ReLU neural networks.
The effectiveness of our attack is
validated through practical experiments
on a wide range of ReLU neural networks,
including neural networks
trained on two real benchmarking datasets
(MNIST, CIFAR10) widely used in computer vision.
For a neural network consisting of $10^5$ parameters,
our attack only requires several hours on a single core.
Coauthors
- Yi Chen (1)
- Xiaoyang Dong (1)
- Jian Guo (1)
- Anyu Wang (1)
- Xiaoyun Wang (1)
- Yantian Shen (1)