Machine unlearning via GAN

11/22/2021
by   Kongyang Chen, et al.
0

Machine learning models, especially deep models, may unintentionally remember information about their training data. Malicious attackers can thus pilfer some property about training data by attacking the model via membership inference attack or model inversion attack. Some regulations, such as the EU's GDPR, have enacted "The Right to Be Forgotten" to protect users' data privacy, enhancing individuals' sovereignty over their data. Therefore, removing training data information from a trained model has become a critical issue. In this paper, we present a GAN-based algorithm to delete data in deep models, which significantly improves deleting speed compared to retraining from scratch, especially in complicated scenarios. We have experimented on five commonly used datasets, and the experimental results show the efficiency of our method.

READ FULL TEXT

page 6

page 7

research
10/21/2020

Amnesiac Machine Learning

The Right to be Forgotten is part of the recently enacted General Data P...
research
05/13/2021

DeepObliviate: A Powerful Charm for Erasing Data Residual Memory in Deep Neural Networks

Machine unlearning has great significance in guaranteeing model security...
research
12/06/2018

Differentially Private Data Generative Models

Deep neural networks (DNNs) have recently been widely adopted in various...
research
08/02/2020

Removing Backdoor-Based Watermarks in Neural Networks with Limited Data

Deep neural networks have been widely applied and achieved great success...
research
10/04/2022

Certified Data Removal in Sum-Product Networks

Data protection regulations like the GDPR or the California Consumer Pri...
research
11/26/2021

Machine Unlearning: Learning, Polluting, and Unlearning for Spam Email

Machine unlearning for security is studied in this context. Several spam...
research
02/20/2023

Towards Unbounded Machine Unlearning

Deep machine unlearning is the problem of removing the influence of a co...

Please sign up or login with your details

Forgot password? Click here to reset