Leveraging Channel Noise for Sampling and Privacy via Quantized Federated Langevin Monte Carlo

02/28/2022
by   Yunchuan Zhang, et al.
0

For engineering applications of artificial intelligence, Bayesian learning holds significant advantages over standard frequentist learning, including the capacity to quantify uncertainty. Langevin Monte Carlo (LMC) is an efficient gradient-based approximate Bayesian learning strategy that aims at producing samples drawn from the posterior distribution of the model parameters. Prior work focused on a distributed implementation of LMC over a multi-access wireless channel via analog modulation. In contrast, this paper proposes quantized federated LMC (FLMC), which integrates one-bit stochastic quantization of the local gradients with channel-driven sampling. Channel-driven sampling leverages channel noise for the purpose of contributing to Monte Carlo sampling, while also serving the role of privacy mechanism. Analog and digital implementations of wireless LMC are compared as a function of differential privacy (DP) requirements, revealing the advantages of the latter at sufficiently high signal-to-noise ratio.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/07/2023

Bayesian Over-the-Air FedAvg via Channel Driven Stochastic Gradient Langevin Dynamics

The recent development of scalable Bayesian inference methods has renewe...
research
08/17/2021

Wireless Federated Langevin Monte Carlo: Repurposing Channel Noise for Bayesian Sampling and Privacy

Most works on federated learning (FL) focus on the most common frequenti...
research
03/01/2021

Channel-Driven Monte Carlo Sampling for Bayesian Distributed Learning in Wireless Data Centers

Conventional frequentist learning, as assumed by existing federated lear...
research
01/12/2022

Federated AirNet: Hybrid Digital-Analog Neural Network Transmission for Federated Learning

A key issue in federated learning over wireless channels is how to excha...
research
02/26/2015

Privacy for Free: Posterior Sampling and Stochastic Gradient Monte Carlo

We consider the problem of Bayesian learning on sensitive datasets and p...
research
06/23/2022

Content Popularity Prediction Based on Quantized Federated Bayesian Learning in Fog Radio Access Networks

In this paper, we investigate the content popularity prediction problem ...
research
12/31/2020

Bayesian Federated Learning over Wireless Networks

Federated learning is a privacy-preserving and distributed training meth...

Please sign up or login with your details

Forgot password? Click here to reset