Robust Federated Personalised Mean Estimation for the Gaussian Mixture Model

Managoli, Malhar A., Prabhakaran, Vinod M., Diggavi, Suhas

arXiv.org Artificial Intelligence 

--Federated learning with heterogeneous data and personalization has received significant recent attention. Separately, robustness to corrupted data in the context of federated learning has also been studied. In this paper we explore combining personalization for heterogeneous data with robustness, where a constant fraction of the clients are corrupted. Motivated by this broad problem, we formulate a simple instantiation which captures some of its difficulty. We focus on the specific problem of personalized mean estimation where the data is drawn from a Gaussian mixture model. We give an algorithm whose error depends almost linearly on the ratio of corrupted to uncorrupted samples, and show a lower bound with the same behavior, albeit with a gap of a constant factor . Federated learning (FL) is a distributed system approach to collaboratively build machine learning models from multiple clients, without directly sharing limited local data [1], [2].

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