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Efficient Machine Learning Seminar

Federated learning meets multi-objective optimization

iCalendar

Feb 12, 2021   01:00 PM — 02:00 PM

Kiarash Shaloudegi Huawei Noah’s Ark, Canada

Kiarash Shaloudegi

Presentation on YouTube

Federated learning has emerged as a promising, massively distributed way to train a joint deep model over large amounts of edge devices while keeping private user data strictly on device. In this work, motivated from ensuring fairness among users and robustness against malicious adversaries, we formulate federated learning as multi-objective optimization and propose a new algorithm FedMGDA+ that is guaranteed to converge to Pareto stationary solutions. FedMGDA+ is simple to implement, has fewer hyperparameters to tune, and refrains from sacrificing the performance of any participating user. We establish the convergence properties of FedMGDA+ and point out its connections to existing approaches. Extensive experiments on a variety of datasets confirm that FedMGDA+ compares favorably against state-of-the-art.


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Vahid Partovi Nia organizer

Location

Online meeting
Zoom
Montréal Québec
Canada