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Federated Multi-Target Domain Adaptation

About

Federated learning methods enable us to train machine learning models on distributed user data while preserving its privacy. However, it is not always feasible to obtain high-quality supervisory signals from users, especially for vision tasks. Unlike typical federated settings with labeled client data, we consider a more practical scenario where the distributed client data is unlabeled, and a centralized labeled dataset is available on the server. We further take the server-client and inter-client domain shifts into account and pose a domain adaptation problem with one source (centralized server data) and multiple targets (distributed client data). Within this new Federated Multi-Target Domain Adaptation (FMTDA) task, we analyze the model performance of exiting domain adaptation methods and propose an effective DualAdapt method to address the new challenges. Extensive experimental results on image classification and semantic segmentation tasks demonstrate that our method achieves high accuracy, incurs minimal communication cost, and requires low computational resources on client devices.

Chun-Han Yao, Boqing Gong, Yin Cui, Hang Qi, Yukun Zhu, Ming-Hsuan Yang• 2021

Related benchmarks

TaskDatasetResultRank
Image ClassificationOffice-31
Average Accuracy88.14
261
Image ClassificationDomainNet (test)
Average Accuracy64.79
209
Image ClassificationOffice-Home (test)
Mean Accuracy76.88
199
Image ClassificationOffice-Home
Average Accuracy65.99
142
Image ClassificationOffice-31 (test)
Avg Accuracy83.05
93
Image ClassificationDomainNet
Average Accuracy57.84
58
Image ClassificationOffice-31 Amazon domain (test)
Accuracy73.81
20
Image ClassificationDomainNet
Accuracy (Q->C)59.78
13
Image ClassificationOffice-31 DSLR domain (test)
Accuracy99.35
8
Image ClassificationOffice-Home Art-Source (sub-table a)
Accuracy (A->C)45.85
8
Showing 10 of 13 rows

Other info

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