Secure Bayesian Federated Analytics for Privacy-Preserving Trend Detection
Abstract
Federated analytics has many applications in edge computing, its use can lead to better decision making for service provision, product development, and user experience. We propose a Bayesian approach to trend detection in which the probability of a keyword being trendy, given a dataset, is computed via Bayes' Theorem; the probability of a dataset, given that a keyword is trendy, is computed through secure aggregation of such conditional probabilities over local datasets of users. We propose a protocol, named SAFE, for Bayesian federated analytics that offers sufficient privacy for production grade use cases and reduces the computational burden of users and an aggregator. We illustrate this approach with a trend detection experiment and discuss how this approach could be extended further to make it production-ready.
Cite
@article{arxiv.2107.13640,
title = {Secure Bayesian Federated Analytics for Privacy-Preserving Trend Detection},
author = {Amit Chaulwar and Michael Huth},
journal= {arXiv preprint arXiv:2107.13640},
year = {2021}
}
Comments
10 pages, 1 figure