Litcius/Paper detail

Self-Supervised On-Device Federated Learning From Unlabeled Streams

Jiahe Shi, Yawen Wu, Dewen Zeng, Jun Tao, Jingtong Hu, Yiyu Shi

2023IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems15 citationsDOI

Abstract

The ubiquity of edge devices has led to a growing amount of unlabeled data produced at the edge. Deep learning models deployed on edge devices are required to learn from these unlabeled data to continuously improve accuracy. Self-supervised representation learning has achieved promising performances using centralized unlabeled data. However, the increasing awareness of privacy protection limits centralizing the distributed unlabeled image data on edge devices. While federated learning has been widely adopted to enable distributed machine learning with privacy preservation, without a data selection method to efficiently select streaming data, the traditional federated learning framework fails to handle these huge amounts of decentralized unlabeled data with limited storage resources on edge. To address these challenges, we propose a self-supervised on-device federated learning framework with coreset selection, which we call SOFed, to automatically select a coreset that consists of the most representative samples into the replay buffer on each device. It preserves data privacy as each client does not share raw data while learning good visual representations. Experiments demonstrate the effectiveness and significance of the proposed method in visual representation learning.

Topics & Concepts

Computer scienceEnhanced Data Rates for GSM EvolutionRaw dataMachine learningArtificial intelligenceEdge deviceSemi-supervised learningLabeled dataExternal Data RepresentationRepresentation (politics)Federated learningData stream miningDeep learningSelection (genetic algorithm)Supervised learningInformation privacyData miningArtificial neural networkCloud computingComputer securityPolitical scienceOperating systemPoliticsLawProgramming languagePrivacy-Preserving Technologies in DataDomain Adaptation and Few-Shot LearningAdvanced Neural Network Applications