Publication | Closed Access
Federated Few-Shot Learning with Adversarial Learning
25
Citations
40
References
2021
Year
Unknown Venue
Artificial IntelligenceFew-shot LearningEngineeringMachine LearningData ScienceZero-shot LearningPattern RecognitionMobile DevicesFederated LearningKnowledge DiscoveryData PrivacyComputer ScienceFederated Learning StrategyDeep LearningFederated Few-shot LearningSemi-supervised LearningSupervised Learning
We are interested in developing a unified machine learning framework for effectively training machine learning models from many small data sources such as mobile devices. This is a commonly encountered situation in mobile computing scenarios, where data is scarce and distributed while the tasks are distinct. In this paper, we propose a federated few-shot learning (FedFSL) framework to learn a few-shot classification model that can classify unseen data classes with only a few labeled samples. With the federated learning strategy, FedFSL can utilize many data sources while keeping data privacy and communication efficiency. To tackle the issue of obtaining misaligned decision boundaries produced by client models, we propose to regularize local updates by minimizing the divergence of client models. We also formulate the training in an adversarial fashion and optimize the client models to produce a discriminative feature space that can better represent unseen data samples. We demonstrate the intuitions and conduct experiments to show our approaches outperform baselines by more than 10% in learning benchmark vision tasks and 5% in language tasks.
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