Litcius/Paper detail

Safeguarding Privacy and Integrity of Federated Learning in Heterogeneous Cross-Silo IoRT Environments: A Moving Target Defense Approach

Zan Zhou, Changqiao Xu, Shujie Yang, Xiaoyan Zhang, Hongjing Li, Sizhe Huang, Gabriel‐Miro Muntean

2024IEEE Network14 citationsDOI

Abstract

In virtue of the Internet of Things and Cobots, the Internet of Robotic Things (IoRT) significantly accelerates production efficiency and quality. As the scope and complexity of IoRT continue to expand, federated learning among massive robots is in urgent need. Nonetheless, this growing demand is accompanied by heightened threats to data privacy and model integrity. Besides, the heterogeneity among cross-silo robots compounds these challenges. In this paper, we discuss the key concerns of collaborative training in IoRT, and propose a shuffling-based moving target defense approach for federated learning in heterogeneous cross-silo IoRT environments (FedMTD). Based on the hierarchical training structure with node clustering, FedMTD bounds heterogeneity by domains, thereby minimizing the learning error and privacy loss. It also enhances resistance towards poisoning adversaries through decentralized credit evaluation. Finally, experimental results illustrate that FedMTD jointly demonstrates significant improvements in learning performance, privacy enhancement, and poisoning resistance.

Topics & Concepts

SafeguardingSiloComputer scienceComputer securityPrivacy protectionInformation privacyInformation siloData integrityEngineeringMechanical engineeringMedicineNursingPrivacy-Preserving Technologies in DataCryptography and Data SecurityIoT and Edge/Fog Computing