Home /Research /Efficient and Privacy-Enhanced Federated Learning for Industrial Artificial Intelligence
LEARNING

Efficient and Privacy-Enhanced Federated Learning for Industrial Artificial Intelligence

Meng Hao, Hongwei Li, Xizhao Luo, Guowen Xu, Haomiao Yang, Sen Liu

Year
2019
Citations
564

Abstract

By leveraging deep learning-based technologies, industrial artificial intelligence (IAI) has been applied to solve various industrial challenging problems in Industry 4.0. However, for privacy reasons, traditional centralized training may be unsuitable for sensitive data-driven industrial scenarios, such as healthcare and autopilot. Recently, federated learning has received widespread attention, since it enables participants to collaboratively learn a shared model without revealing their local data. However, studies have shown that, by exploiting the shared parameters adversaries can still compromise industrial applications such as auto-driving navigation systems, medical data in wearable devices, and industrial robots' decision making. In this article, to solve this problem, we propose an efficient and privacy-enhanced federated learning (PEFL) scheme for IAI. Compared with existing solutions, PEFL is noninteractive, and can prevent private data from being leaked even if multiple entities collude with each other. Moreover, extensive experiments with real-world data demonstrate the superiority of PEFL in terms of accuracy and efficiency.

Keywords

Computer scienceCompromiseArtificial intelligenceScheme (mathematics)Information privacyWearable computerWearable technologyBig dataDeep learningFederated learning

Related papers

Browse all LEARNING papers