CryptoDB
Ilya Mironov
Publications
Year
Venue
Title
2020
CRYPTO
Cryptanalytic Extraction of Neural Network Models
📺
Abstract
We argue that the machine learning problem of model extraction is actually a cryptanalytic problem in disguise, and should be studied as such. Given oracle access to a neural network, we introduce a differential attack that can efficiently steal the parameters of the remote model up to floating point precision. Our attack relies on the fact that ReLU neural networks are piecewise linear functions, and thus queries at the critical points reveal information about the model parameters.
We evaluate our attack on multiple neural network models and extract models that are 2^20 times more precise and require 100x fewer queries than prior work. For example, we extract a 100,000 parameter neural network trained on the MNIST digit recognition task with 2^21.5 queries in under an hour, such that the extracted model agrees with the oracle on all inputs up to a worst-case error of 2^-25, or a model with 4,000 parameters in 2^18.5 queries with worst-case error of 2^-40.4. Code is available at https://github.com/google-research/cryptanalytic-model-extraction.
2016
CRYPTO
Service
- Crypto 2019 Program committee
- Eurocrypt 2017 Program committee
- Crypto 2014 Program committee
- Eurocrypt 2014 Program committee
- PKC 2014 Program committee
- TCC 2013 Program committee
- Crypto 2010 Program committee
- Crypto 2005 Program committee
Coauthors
- Martín Abadi (1)
- Dan Boneh (2)
- Joseph Bonneau (1)
- Nicholas Carlini (1)
- Yevgeniy Dodis (2)
- Cynthia Dwork (1)
- Vipul Goyal (1)
- Divya Gupta (1)
- Matthew Jagielski (1)
- Krishnaram Kenthapadi (1)
- Adriana López-Alt (1)
- Frank McSherry (1)
- Ilya Mironov (17)
- Moni Naor (1)
- Omkant Pandey (4)
- Ananth Raghunathan (1)
- Omer Reingold (3)
- Amit Sahai (2)
- Gil Segev (4)
- Ido Shahaf (1)
- Noah Stephens-Davidowitz (2)
- Salil P. Vadhan (2)