Paper ID: 2310.09370

Near-optimal Differentially Private Client Selection in Federated Settings

Syed Eqbal Alam, Dhirendra Shukla, Shrisha Rao

We develop an iterative differentially private algorithm for client selection in federated settings. We consider a federated network wherein clients coordinate with a central server to complete a task; however, the clients decide whether to participate or not at a time step based on their preferences -- local computation and probabilistic intent. The algorithm does not require client-to-client information exchange. The developed algorithm provides near-optimal values to the clients over long-term average participation with a certain differential privacy guarantee. Finally, we present the experimental results to check the algorithm's efficacy.

Submitted: Oct 13, 2023