Mixed Precision Quantization to Tackle Gradient Leakage Attacks in Federated Learning

10/22/2022
by   Pretom Roy Ovi, et al.
0

Federated Learning (FL) enables collaborative model building among a large number of participants without the need for explicit data sharing. But this approach shows vulnerabilities when privacy inference attacks are applied to it. In particular, in the event of a gradient leakage attack, which has a higher success rate in retrieving sensitive data from the model gradients, FL models are at higher risk due to the presence of communication in their inherent architecture. The most alarming thing about this gradient leakage attack is that it can be performed in such a covert way that it does not hamper the training performance while the attackers backtrack from the gradients to get information about the raw data. Two of the most common approaches proposed as solutions to this issue are homomorphic encryption and adding noise with differential privacy parameters. These two approaches suffer from two major drawbacks. They are: the key generation process becomes tedious with the increasing number of clients, and noise-based differential privacy suffers from a significant drop in global model accuracy. As a countermeasure, we propose a mixed-precision quantized FL scheme, and we empirically show that both of the issues addressed above can be resolved. In addition, our approach can ensure more robustness as different layers of the deep model are quantized with different precision and quantization modes. We empirically proved the validity of our method with three benchmark datasets and found a minimal accuracy drop in the global model after applying quantization.

READ FULL TEXT

page 5

page 6

research
02/14/2022

Do Gradient Inversion Attacks Make Federated Learning Unsafe?

Federated learning (FL) allows the collaborative training of AI models w...
research
05/02/2021

GRNN: Generative Regression Neural Network – A Data Leakage Attack for Federated Learning

Data privacy has become an increasingly important issue in machine learn...
research
09/14/2023

Communication Efficient Private Federated Learning Using Dithering

The task of preserving privacy while ensuring efficient communication is...
research
10/17/2020

Layer-wise Characterization of Latent Information Leakage in Federated Learning

Training a deep neural network (DNN) via federated learning allows parti...
research
02/06/2022

BEAS: Blockchain Enabled Asynchronous Secure Federated Machine Learning

Federated Learning (FL) enables multiple parties to distributively train...
research
10/28/2021

Gradient Inversion with Generative Image Prior

Federated Learning (FL) is a distributed learning framework, in which th...
research
05/10/2023

Securing Distributed SGD against Gradient Leakage Threats

This paper presents a holistic approach to gradient leakage resilient di...

Please sign up or login with your details

Forgot password? Click here to reset