Bitwidth Heterogeneous Federated Learning with Progressive Weight Dequantization

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dc.contributor.authorYoon, Jaehongko
dc.contributor.authorPark, Geonko
dc.contributor.authorJeong, Wonyongko
dc.contributor.authorHwang, Sung Juko
dc.date.accessioned2022-12-05T00:00:13Z-
dc.date.available2022-12-05T00:00:13Z-
dc.date.created2022-12-05-
dc.date.created2022-12-05-
dc.date.created2022-12-05-
dc.date.issued2022-07-23-
dc.identifier.citation39th International Conference on Machine Learning, ICML 2022-
dc.identifier.issn2640-3498-
dc.identifier.urihttp://hdl.handle.net/10203/301566-
dc.description.abstractIn practical federated learning scenarios, the participating devices may have different bitwidths for computation and memory storage by design. However, despite the progress made in deviceheterogeneous federated learning scenarios, the heterogeneity in the bitwidth specifications in the hardware has been mostly overlooked. We introduce a pragmatic FL scenario with bitwidth heterogeneity across the participating devices, dubbed as Bitwidth Heterogeneous Federated Learning (BHFL). BHFL brings in a new challenge, that the aggregation of model parameters with different bitwidths could result in severe performance degeneration, especially for highbitwidth models. To tackle this problem, we propose ProWD framework, which has a trainable weight dequantizer at the central server that progressively reconstructs the low-bitwidth weights into higher bitwidth weights, and finally into fullprecision weights. ProWD further selectively aggregates the model parameters to maximize the compatibility across bit-heterogeneous weights. We validate ProWD against relevant FL baselines on the benchmark datasets, using clients with varying bitwidths. Our ProWD largely outperforms the baseline FL algorithms as well as naive approaches (e.g. grouped averaging) under the proposed BHFL scenario.-
dc.languageEnglish-
dc.publisherInternational Machine Learning Society (IMLS)-
dc.titleBitwidth Heterogeneous Federated Learning with Progressive Weight Dequantization-
dc.typeConference-
dc.identifier.wosid000900130206035-
dc.identifier.scopusid2-s2.0-85163085275-
dc.type.rimsCONF-
dc.citation.publicationname39th International Conference on Machine Learning, ICML 2022-
dc.identifier.conferencecountryUS-
dc.identifier.conferencelocationBaltimore, Maryland-
dc.contributor.localauthorHwang, Sung Ju-
dc.contributor.nonIdAuthorPark, Geon-
dc.contributor.nonIdAuthorJeong, Wonyong-
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AI-Conference Papers(학술대회논문)
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