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Abstract
Federated learning (FL) is a new paradigm that enables many clients to
jointly train a machine learning (ML) model under the orchestration of a
parameter server while keeping the local data not being exposed to any third
party. However, the training of FL is an interactive process between local
clients and the parameter server. Such process would cause privacy leakage
since adversaries may retrieve sensitive information by analyzing the overheard
messages. In this paper, we propose a new federated stochastic primal-dual
algorithm with differential privacy (FedSPD-DP). Compared to the existing
methods, the proposed FedSPD-DP incorporates local stochastic gradient descent
(local SGD) and partial client participation (PCP) for addressing the issues of
communication efficiency and straggler effects due to randomly accessed
clients. Our analysis shows that the data sampling strategy and PCP can enhance
the data privacy whereas the larger number of local SGD steps could increase
privacy leakage, revealing a non-trivial tradeoff between algorithm
communication efficiency and privacy protection. Specifically, we show that, by
guaranteeing $(\epsilon, \delta)$-DP for each client per communication round,
the proposed algorithm guarantees $(\mathcal{O}(q\epsilon \sqrt{p T}),
\delta)$-DP after $T$ communication rounds while maintaining an
$\mathcal{O}(1/\sqrt{pTQ})$ convergence rate for a convex and non-smooth
learning problem, where $Q$ is the number of local SGD steps, $p$ is the client
sampling probability, $q=\max_{i} q_i/\sqrt{1-q_i}$ and $q_i$ is the data
sampling probability of each client under PCP. Experiment results are presented
to evaluate the practical performance of the proposed algorithm and comparison
with state-of-the-art methods.