Graph-Homomorphic Perturbations for Private Decentralized Learning

10/23/2020
by   Stefan Vlaski, et al.
0

Decentralized algorithms for stochastic optimization and learning rely on the diffusion of information as a result of repeated local exchanges of intermediate estimates. Such structures are particularly appealing in situations where agents may be hesitant to share raw data due to privacy concerns. Nevertheless, in the absence of additional privacy-preserving mechanisms, the exchange of local estimates, which are generated based on private data can allow for the inference of the data itself. The most common mechanism for guaranteeing privacy is the addition of perturbations to local estimates before broadcasting. These perturbations are generally chosen independently at every agent, resulting in a significant performance loss. We propose an alternative scheme, which constructs perturbations according to a particular nullspace condition, allowing them to be invisible (to first order in the step-size) to the network centroid, while preserving privacy guarantees. The analysis allows for general nonconvex loss functions, and is hence applicable to a large number of machine learning and signal processing problems, including deep learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/22/2019

Distributed Differentially Private Computation of Functions with Correlated Noise

Many applications of machine learning, such as human health research, in...
research
02/10/2020

WibsonTree: Efficiently Preserving Seller's Privacy in a Decentralized Data Marketplace

We present a cryptographic primitive called WibsonTree designed to prese...
research
01/23/2022

Towards Private Learning on Decentralized Graphs with Local Differential Privacy

Many real-world networks are inherently decentralized. For example, in s...
research
11/02/2021

Privacy-Preserving Communication-Efficient Federated Multi-Armed Bandits

Communication bottleneck and data privacy are two critical concerns in f...
research
06/19/2022

Privacy-Preserving Analytics on Decentralized Social Graphs: The Case of Eigendecomposition

Analytics over social graphs allows to extract valuable knowledge and in...
research
05/28/2022

Large-Scale Privacy-Preserving Network Embedding against Private Link Inference Attacks

Network embedding represents network nodes by a low-dimensional informat...
research
12/16/2019

On privacy preserving data release of linear dynamic networks

Distributed data sharing in dynamic networks is ubiquitous. It raises th...

Please sign up or login with your details

Forgot password? Click here to reset