CryptoDB
Ruijie Ma
Publications and invited talks
Year
Venue
Title
2025
ASIACRYPT
Delving into Cryptanalytic Extraction of PReLU Neural Networks
Abstract
The machine learning problem of model extraction
was first introduced in 1991 and
gained prominence as a cryptanalytic challenge starting with Crypto 2020.
For over three decades, research in this field has primarily
focused on ReLU-based neural networks.
In this work, we take the first step towards the
cryptanalytic extraction of PReLU neural networks,
which employ more complex nonlinear activation functions than their ReLU counterparts.
We propose a raw output-based parameter recovery attack for PReLU networks
and extend it to more restrictive scenarios where only the top-m probability scores are accessible.
Our attacks are rigorously evaluated through end-to-end experiments
on diverse PReLU neural networks,
including models trained on the MNIST dataset.
To the best of our knowledge, this is the first practical demonstration
of the PReLU neural network extraction
across three distinct attack scenarios.
Coauthors
- Yi Chen (1)
- Xiaoyang Dong (1)
- Ruijie Ma (1)
- Anyu Wang (1)
- Xiaoyun Wang (1)
- Yantian Shen (1)
- Hongbo Yu (1)