Paper ID | MLSP-33.6 |
Paper Title |
DEMYSTIFYING MODEL AVERAGING FOR COMMUNICATION-EFFICIENT FEDERATED MATRIX FACTORIZATION |
Authors |
Shuai Wang, Richard Cornelius Suwandi, Tsung-Hui Chang, The Chinese University of Hong Kong, Shenzhen, China |
Session | MLSP-33: Optimization Methods |
Location | Gather.Town |
Session Time: | Thursday, 10 June, 15:30 - 16:15 |
Presentation Time: | Thursday, 10 June, 15:30 - 16:15 |
Presentation |
Poster
|
Topic |
Machine Learning for Signal Processing: [MLR-DFED] Distributed/Federated learning |
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Virtual Presentation |
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Abstract |
Federated learning (FL) is encountered with the challenge of training a model in massive and heterogeneous networks. Model averaging (MA) has become a popular FL paradigm where parallel (stochastic) gradient descent (GD) is run on a small sampled subset of clients multiple times before uploading the local models to a server for averaging, which has been proven effective in reducing the communication cost for achieving a good model. However, MA has not been considered for the important matrix factorization (MF) model, which has vast signal processing and machine learning applications. In this paper, we investigate the federated MF problem and propose a new MA based algorithm, named FedMAvg, by judiciously combining the alternating minimization technique and MA. Through analysis, we show that gradually decreasing the number of local GD and only allowing partial clients to communicate with the server can greatly reduce the communication cost, especially in heterogeneous networks with non-i.i.d. data. Experimental results by applying FedMAvg to data clustering and item recommendation tasks demonstrate its efficacy in terms of both task performance and communication efficiency. |