Local Graph-homomorphic Processing for Privatized Distributed Systems
Elsa Rizk (EPFL); Stefan Vlaski (Imperial College London); Ali H. Sayed (Ecole Polytechnique Fédérale de Lausanne)
-
SPS
IEEE Members: $11.00
Non-members: $15.00
We study the generation of dependent random numbers in a distributed
fashion in order to enable privatized distributed learning by
networked agents. We propose a method that we refer to as local
graph-homomorphic processing; it relies on the construction of particular
noises over the edges to ensure a certain level of differential
privacy. We show that the added noise does not affect the performance
of the learned model. This is a significant improvement
to previous works on differential privacy for distributed algorithms,
where the noise was added in a less structured manner without respecting
the graph topology and has often led to performance deterioration.
We illustrate the theoretical results by considering a linear
regression problem over a network of agents.